WO2022269908A1 - 最適化提案システム、最適化提案方法、及び記録媒体 - Google Patents
最適化提案システム、最適化提案方法、及び記録媒体 Download PDFInfo
- Publication number
- WO2022269908A1 WO2022269908A1 PCT/JP2021/024163 JP2021024163W WO2022269908A1 WO 2022269908 A1 WO2022269908 A1 WO 2022269908A1 JP 2021024163 W JP2021024163 W JP 2021024163W WO 2022269908 A1 WO2022269908 A1 WO 2022269908A1
- Authority
- WO
- WIPO (PCT)
- Prior art keywords
- optimization
- individual
- personal data
- classification
- individuals
- Prior art date
Links
- 238000005457 optimization Methods 0.000 title claims abstract description 133
- 238000000034 method Methods 0.000 title claims description 11
- 230000009471 action Effects 0.000 claims abstract description 143
- 238000007405 data analysis Methods 0.000 claims abstract description 20
- 238000000605 extraction Methods 0.000 claims description 10
- 238000011156 evaluation Methods 0.000 claims description 7
- 230000036541 health Effects 0.000 description 12
- 238000010586 diagram Methods 0.000 description 8
- 230000006399 behavior Effects 0.000 description 7
- 230000004048 modification Effects 0.000 description 5
- 238000012986 modification Methods 0.000 description 5
- 239000000284 extract Substances 0.000 description 4
- 230000006870 function Effects 0.000 description 4
- 238000012545 processing Methods 0.000 description 4
- 230000036642 wellbeing Effects 0.000 description 4
- 238000004458 analytical method Methods 0.000 description 3
- 238000013473 artificial intelligence Methods 0.000 description 3
- 238000013528 artificial neural network Methods 0.000 description 3
- 230000000694 effects Effects 0.000 description 3
- 238000004891 communication Methods 0.000 description 2
- 238000005516 engineering process Methods 0.000 description 2
- 235000013305 food Nutrition 0.000 description 2
- 230000008520 organization Effects 0.000 description 2
- 230000008569 process Effects 0.000 description 2
- 230000001737 promoting effect Effects 0.000 description 2
- 230000009467 reduction Effects 0.000 description 2
- 238000004364 calculation method Methods 0.000 description 1
- 238000006243 chemical reaction Methods 0.000 description 1
- 238000003066 decision tree Methods 0.000 description 1
- 238000013135 deep learning Methods 0.000 description 1
- 230000007613 environmental effect Effects 0.000 description 1
- 230000006872 improvement Effects 0.000 description 1
- 230000007774 longterm Effects 0.000 description 1
- 238000010801 machine learning Methods 0.000 description 1
- 230000007246 mechanism Effects 0.000 description 1
- 230000003287 optical effect Effects 0.000 description 1
- 230000002093 peripheral effect Effects 0.000 description 1
- 150000003839 salts Chemical class 0.000 description 1
- 239000004065 semiconductor Substances 0.000 description 1
- 239000013589 supplement Substances 0.000 description 1
- 230000001960 triggered effect Effects 0.000 description 1
Images
Classifications
-
- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q10/00—Administration; Management
- G06Q10/06—Resources, workflows, human or project management; Enterprise or organisation planning; Enterprise or organisation modelling
Definitions
- the present disclosure relates to an optimization proposal system, an optimization proposal method, and a recording medium.
- Patent Literature 1 discloses a technology that supports a resident who is engaged in work while staying in a predetermined area to work while staying in an area other than the area from the viewpoint of "well-being".
- Patent Document 1 is nothing more than a technique for supporting individuals who are residents engaged in work. In order to realize a smart city, it is necessary to encourage the residents and companies of the city to actively solve the problems of the city, and to solve not only the problems of individuals but also the problems of the city.
- One example of the purpose of the present disclosure is to provide a device that can solve not only individual problems but also city problems.
- An optimization proposal device includes optimization goal acceptance means for accepting an input of an optimization goal for achieving a target result index of a city, and personal data of a plurality of individuals belonging to the city.
- personal data receiving means for receiving input; personal data analyzing means for analyzing requests of a plurality of individuals based on the personal data received by the personal data receiving means; an individual classification means for classifying, an individual suggested action specifying means for specifying the suggested action for each individual based on the classification by the individual classifying means, and an output means for outputting the suggested action for each of the specified individuals;
- An optimization proposal method in one aspect of the present disclosure receives an input of an optimization goal for achieving a target outcome index for a city, receives input of personal data about a plurality of individuals belonging to the city, and receives Based on the collected personal data, analyze the requests of multiple individuals, classify the individuals based on the analyzed requests, identify suggested actions for each of the individuals based on the classification, and send to each of the identified individuals outputs the suggested actions of .
- a recording medium in one aspect of the present disclosure accepts input of an optimization goal for achieving a city's target outcome index, accepts input of personal data about a plurality of individuals belonging to the city, and accepts Based on personal data, analyze the demands of multiple individuals, classify the individuals with the analyzed demands, identify suggested actions for each of the individuals based on the classification, and propose to each of the identified individuals Stores a program that causes a computer to execute an action output.
- One example of the effect of the present disclosure is that it is possible to provide a device that can solve not only individual problems but also city problems.
- FIG. 1 is a block diagram showing the configuration of an optimization proposal device according to the first embodiment.
- FIG. 2 is a diagram showing a hardware configuration in which the optimization proposal device according to the first embodiment is implemented by a computer device and its peripheral devices.
- FIG. 3 is a flow chart showing the operation of the optimization proposal device in the first embodiment.
- FIG. 4 is a block diagram showing the configuration of the optimization proposal device in the second embodiment.
- FIG. 5 is a flow chart showing an optimization proposal operation in the second embodiment.
- FIG. 6 is a block diagram showing the configuration of a consignee selection unit in the modification of the second embodiment.
- FIG. 7 is a flow chart showing the operation of selecting a trustee in the modification of the second embodiment.
- FIG. 1 is a block diagram showing the configuration of an optimization proposal device 100 according to the first embodiment.
- the optimization proposal device 100 in the first embodiment is a system that outputs actions that improve both individual issues and city indices.
- the optimization proposal device 100 includes an optimization target reception unit 101, a personal data reception unit 102, a personal data analysis unit 103, an individual classification unit 104, an individual proposal behavior identification unit 105, and an output unit .
- the optimization proposal device 100 which is an essential component of this embodiment, will be described in detail below.
- FIG. 2 is a diagram showing an example of a hardware configuration in which the optimization proposal device 100 according to the first embodiment of the present disclosure is implemented by a computer device 500 including a processor.
- the optimization proposal device 100 includes a memory such as a CPU (Central Processing Unit) 501, a ROM (Read Only Memory) 502, a RAM (Random Access Memory) 503, and a hard disk storing a program 504. It includes a storage device 505, a communication I/F (Interface) 508 for network connection, and an input/output interface 511 for inputting/outputting data.
- a memory such as a CPU (Central Processing Unit) 501, a ROM (Read Only Memory) 502, a RAM (Random Access Memory) 503, and a hard disk storing a program 504.
- It includes a storage device 505, a communication I/F (Interface) 508 for network connection, and an input/output interface 511 for inputting/outputting data.
- I/F Interface
- the CPU 501 operates the operating system and controls the overall optimization proposal device 100 according to the first embodiment of the present invention. Also, the CPU 501 reads programs and data from a recording medium 506 mounted in a drive device 507 or the like to a memory. The CPU 501 also includes the optimization target reception unit 101, the personal data reception unit 102, the personal data analysis unit 103, the individual classification unit 104, the individual suggested action identification unit 105, the output unit 106, and a portion thereof in the first embodiment. , and executes processing or instructions in the flowchart shown in FIG. 3, which will be described later, based on the program.
- the recording medium 506 is, for example, an optical disk, a flexible disk, a magneto-optical disk, an external hard disk, or a semiconductor memory.
- a part of the recording medium of the storage device is a non-volatile storage device, in which programs are recorded.
- the program may be downloaded from an external computer (not shown) connected to a communication network.
- the input device 509 is realized by, for example, a mouse, keyboard, built-in key buttons, etc., and is used for input operations.
- the input device 509 is not limited to a mouse, keyboard, or built-in key buttons, and may be a touch panel, for example.
- the output device 510 is implemented by, for example, a display and used to confirm the output.
- information received by the optimization target receiving unit 101 and the personal data receiving unit 102 is input to the optimization proposal device 100 via the input device 509, for example.
- the first embodiment shown in FIG. 1 is implemented by the computer hardware shown in FIG.
- the implementation means of each unit included in the optimization proposal device 100 of FIG. 1 is not limited to the configuration described above.
- the optimization proposal device 100 may be realized by one physically connected device, or may be realized by two or more physically separated devices connected by wire or wirelessly. good too.
- input device 509 and output device 510 may be connected to computer device 500 via a network.
- the optimization proposal device 100 in the first embodiment shown in FIG. 1 can be configured by cloud computing or the like.
- the optimization target reception unit 101 is a means for receiving optimization targets for achieving the city's target outcome index.
- a city in the present embodiment refers to, for example, an area supervised by a specific administrative organization or its administrative organization, and includes not only areas where the population is concentrated but also rural areas.
- Performance indicators which are targets for cities, are indicators for quantitatively grasping the results (achievements) of projects that correspond to administrative issues raised by each city. Administrative issues include, for example, improving the health of residents, promoting the economy of cities, and environmental problems. For example, if the administrative task is to improve the health of residents, performance indicators such as a 10% reduction in long-term care insurance premiums and a 20% reduction in medical expenses are set.
- Optimization goals are specific measures to achieve performance indicators, and are information that can be input into a trained AI (Artificial Intelligence) model to analyze proposed actions for implementing the measures. . If the optimization goal is to promote the health of residents as described above, for example, the content of making residents walk a specific distance or improving the numerical value of a specific item in the results of a health checkup can be mentioned.
- the optimization goal reception unit 101 receives an optimization goal input through the input device 509 or the like when the optimization proposal device 100 analyzes the proposed action. Upon receiving input of information on optimization goals from the operator, optimization goal reception unit 101 outputs the received information on optimization goals to personal data analysis unit 103 and individually proposed action identification unit 105 .
- the personal data reception unit 102 is means for receiving input of personal data of individuals belonging to the city.
- Individuals belonging to cities include residents of cities, people who commute to work or school in cities, and corporations such as businesses.
- Personal data is information about a specific individual, and includes, for example, personal attribute information, health information, happiness level (well-being level), action history information, or personal information collected from sensors.
- the personal data reception unit 102 acquires individual questionnaires, health checkup results, or sensing data, converts them into personal data such as attribute information, health information, well-being levels, action history, situations, and states, and stores them in the storage device 505 .
- Attribute information is age or sex, for example.
- the health information is, for example, information indicating the physique such as height and weight, and information on the results of health examinations.
- the degree of well-being is, for example, information based on the results of questionnaires, etc., from which the needs of an individual's life can be extracted.
- the status is, for example, information that can be used to grasp an individual's recent status obtained from the contents of the notification to the administrative agency.
- a state is information obtained from sensing data or action history data.
- the personal data reception unit 102 may receive input of personal data through the input device 509 by the user's operation. Also, the personal data receiving unit 102 may periodically acquire personal data from a PDS (Personal Data Store) or the like that centrally manages personal data.
- PDS Personal Data Store
- the personal data analysis unit 103 is means for analyzing personal requests based on the personal data stored in the storage device 505 by the personal data reception unit 102 .
- Personal data analysis unit 103 first analyzes the individual's request when the information on the optimization goal is input from optimization goal reception unit 101 .
- a request is, for example, a request related to an individual's life, such as wanting to lead a healthy life or wanting to find a job.
- a specific request is a request that is somehow related to the optimization goal received by the optimization goal receiving unit 101 .
- Being related to the optimization goal means, for example, that if the optimization goal is to improve the health of residents, the individual's desire is to lead a healthy life.
- requests include requests that can be inferred from personal data as well as requests that can be grasped directly from the results of questionnaires.
- Personal data analysis unit 103 analyzes the requirements of each individual and outputs the analysis result to individual classification unit 104 .
- the individual classification unit 104 is means for classifying individuals based on the requests analyzed by the personal data analysis unit 103.
- the individual classification unit 104 classifies individuals having specific needs based on personal data.
- the storage device 505 stores in advance a table in which classification names are associated with classification criteria, and the individual classification unit 104 is stored in the storage device 505.
- As a method of classifying individuals for example, there is a method of classifying individuals according to their attributes and personalities. An attribute is age or sex, for example.
- personality is classified, for example, by behavior history, and an individual with a large amount of behavior is classified as sociable, and conversely, a person with a small amount of behavior is classified as introverted.
- the individual classification unit 104 can also classify the answers to the questionnaire according to detailed characteristics such as stubborn, effect-oriented, ashamed, honor student, compliant, or anxious. Furthermore, it is also possible to classify the walking distance per day necessary for each individual based on the results of the health checkup.
- the individual classification unit 104 outputs the classification information classified for each individual to the individual suggested action identification unit 105 .
- the individual suggested action specifying unit 105 is means for specifying the content of the individual's suggested action for each category classified by the individual classifying unit 104 .
- the storage device 505 stores in advance a table in which classification names are associated with suggested action contents for the classification.
- the individually suggested action identifying unit 105 refers to the storage device 505 and identifies the content of the suggested action to the individual according to the classification information input from the individual classifying unit 104 .
- the individual suggested action specifying unit 105 outputs the content of the specified individual suggested action to the output unit 106 .
- Suggested actions are actions recommended for each individual to satisfy their needs. For example, if the classification by the individual classification unit 104 is the daily walking distance required for each individual, the recommended action is to recommend restaurants and specific menus that are within a suitable distance for each individual, or Giving a menu coupon can be mentioned.
- the output unit 106 is means for outputting the suggested actions identified by the individually suggested action identifying unit 105 so that the operator can view them, or for notifying the target individual of the proposed actions using an application or e-mail.
- FIG. 3 is a flow chart showing an overview of the operation of the optimization proposal device 100 in the first embodiment. Note that the processing according to this flowchart may be executed based on program control by the processor described above.
- the optimization target reception unit 101 first receives input of an optimization target (step S101).
- the personal data receiving unit 102 receives input of personal data about the individual (step S102).
- the personal data analysis unit 103 analyzes the personal request based on the personal data (step S103).
- the individual classification unit 104 classifies individuals based on the requests analyzed by the personal data analysis unit 103 (step S104).
- the individual suggested action identification unit 105 identifies the content of the individual suggested action for achieving the optimization goal based on the optimization goal and the request for each category (step S105).
- the content of the identified individual's proposed action is output (step S106). With this, the optimization proposal device 100 ends the optimization proposal operation.
- the individually proposed action identifying unit 105 provides each individual who has a request related to the optimization goal with the optimization goal while satisfying the request. Identify the content of suggested actions that improve As a result, by suggesting different actions for each classification, it is possible to propose actions that are easy for each individual to take. With the optimization proposal device 100, it is possible to specify a proposed action that leads to an improvement in an individual's request and optimization goal, so that not only individual problems but also city problems can be solved.
- the individual classification unit 104 and the individual suggested action identification unit 105 use the learned model to identify the classification and the contents of the individual suggested action. These trained models are also stored in the storage device 505 .
- the individual classification unit 104 and the individual suggested action identification unit 105 use the learned model instead of using the table stored in the storage device 505, or use the table to identify the content of the classification and the individual suggested action. do.
- the individual classification unit 104 classifies individuals by inputting personal data into the trained model.
- This model is a model generated by learning, as learning data, personal data about an individual and classification based on the personal data.
- Classification methods for individuals include, for example, classification by attributes (age, sex), classification by foods that can be ingested based on health checkup results, and classification by amount of exercise required based on exercise history such as walking distance.
- the individually suggested action identifying unit 105 identifies suggested actions for individuals by inputting classifications into the learned model.
- this model shows the relationship between one or more combinations of classification and optimization goals obtained as learning data and actions that indicate the correct label of the learning data (achieving the requirements and optimization goals).
- a trained model is generated for each combination using neural networks, graph AI, and other machine learning algorithms.
- the model may be updated and strengthened by verifying the learned model based on the rate of acceptance of the proposal from the individual when the proposed action is actually presented to the individual.
- the individually proposed action identifying unit 105 receives the learned model corresponding to the combination of the classification and the optimization target. is used to identify suggested actions that meet the requirements and optimization goals.
- the learning data is used to learn the model, and the content of the suggested action is specified.
- the model is, for example, a model that outputs a list of menu recommendations when an individual's request is for a healthy life, and inputs foods that can be ingested (for example, the amount of salt per day) as classification information.
- model is a model in which a recommendation list for each restaurant is output when the amount of exercise required for the model, individual location information, or location information for restaurants is input.
- Another example model is a model in which when a restaurant menu is input, a recommended menu is output from the menu. In this model, the menus of one restaurant or multiple restaurants may be input.
- the individual classification unit 104 and the individual suggested action identification unit 105 use the learned model to identify the content of the classification and the individual suggested action. This makes it possible to specify a suggested action that is in line with the actual situation based on personal data.
- each component in each embodiment of the optimization proposal device 110 in the second embodiment can of course implement its function in hardware as in the computer device shown in FIG. It can be implemented by a device or firmware.
- FIG. 4 is a block diagram showing the configuration of the optimization proposal device 110 according to the second embodiment of the present disclosure.
- the optimization proposal device 110 according to the second embodiment will be described, focusing on the differences from the optimization proposal device 100 according to the first embodiment.
- An optimization proposal device 110 according to the second embodiment includes a result index reception unit 111, an optimization target reception unit 112, a classification-based suggested behavior identification unit 113, a personal data reception unit 114, a personal data analysis unit 115, and an individual classification unit. 116 , an individual suggested action specifying unit 117 and an output unit 118 .
- the optimization proposal device 110 differs from the optimization proposal device 100 according to the first embodiment in that it includes a result index reception unit 111 and a category-based suggested action identification unit 113 .
- the optimization goal reception unit 112, the personal data reception unit 114, the personal data analysis unit 115, and the individual classification unit 116 are similar to the optimization goal reception unit 101, the personal data reception unit 102, and the personal data analysis unit 103 in the first embodiment. , and the operation and function of the individual classification unit 104 are the same, so a description thereof will be omitted.
- the result index reception unit 111 is means for receiving input of the result index, which is the target of the city, and converting it into an optimization target.
- the performance index and the optimization target are the same concepts as in the first embodiment.
- the result index reception unit 111 automatically converts the result index into the optimization target using, for example, a pre-learned conversion model.
- the result index reception unit 111 may identify the optimization goal by referring to a table in which the result index and the optimization goal are associated with each other and stored in advance in the storage device 505 .
- the category-based suggested action identifying unit 113 is means for identifying the suggested action that an individual should take by category in order to achieve the optimization goal. For example, if the optimization goal is to reduce healthcare costs by 20%, then by category, reduce healthcare costs, i.e., reduce the chances of an individual using healthcare services, and identify actions to take to become healthier. For example, if a suggested action to be taken is specified for each category, a suggested action to walk on a route with a large load is suggested for a category that is accustomed to exercise, and a route with a small load is suggested for a category that is not accustomed to exercise. Suggest actions to walk.
- the individual suggested action identifying unit 117 identifies the content of the proposed action for the individual by associating the classified proposed action identified by the classified proposed action identifying unit 113 with the classification classified by the individual classifying unit 116 .
- the individually suggested action identifying unit 117 outputs the content of the identified suggested action to the output unit 118 .
- the output unit 118 has a function of prompting the target individual to take the suggested action proposed by the individually suggested action identifying unit 117 .
- the output unit 118 notifies the target person who performs the suggested action to perform the suggested action through the display screen of the application or a message. Each individual notified of the content of the suggested action can select whether or not to accept the notified suggested action. If the proposed action is not accepted by the target person, the output unit 118 outputs the information to the individually suggested action specifying unit 117 .
- the individually suggested action identifying unit 117 identifies another suggested action, and the output unit 118 notifies the target person of the another suggested action.
- the output unit 118 may transmit, to the terminal possessed by the target person, a screen in which the individual approves the contents of the suggested action and the target person implements the action, giving praise.
- FIG. 5 is a flow chart showing an overview of the operation of the optimization proposal device 110 in the second embodiment. Note that the processing according to this flowchart may be executed based on program control by the processor described above.
- the result index reception unit 111 first receives the input of the result index and converts it into an optimization goal (step S201).
- the optimization target reception unit 112 receives input of an optimization target from the result index reception unit 111 (step S202).
- the classification-based suggested action identifying unit 113 identifies a classification-based suggested action for achieving the optimization target (step S203).
- personal data accepting unit 114 accepts an input of personal data about an individual (step S204).
- the personal data analysis unit 115 analyzes the personal request based on the personal data (step S205).
- the individual classification unit 116 classifies the individual having the needs analyzed by the personal data analysis unit 115 (step S206).
- the individually suggested action identifying unit 117 identifies the proposed action by associating the classified suggested action identified by the classified suggested action identifying unit 113 with the classification classified by the individual classifying unit 116 (step S207). ).
- the output unit 118 notifies the subject of the proposed action, and the subject inputs the presence or absence of consent (step S208). If the target person consents to the suggested action (step S208; YES), the output unit 118 prompts the target individual to perform the suggested action (step S209). If the subject does not agree to the suggested action (step S208; NO), the process returns to step S207, and the individual suggested action specifying unit 117 specifies another suggested action. With this, the optimization proposal device 110 ends the optimization proposal operation.
- the output unit 118 prompts the target individual to perform the suggested action proposed by the individually suggested action specifying unit 117, thereby promoting the realization of the individual's request.
- a modification of the second embodiment will be described. It has a consignee selection unit 119 that selects a consignee of a business that encourages an individual to perform the suggested action specified by the individual suggested action specifying unit 117 of the second embodiment.
- a consignee selection unit 119 selects a consignee of a business that encourages an individual to perform the suggested action specified by the individual suggested action specifying unit 117 of the second embodiment.
- PFS result-linked private consignment contract system
- a private company carries out activities to achieve the outcome index, which is the city's goal set by the local government.
- the consignee selection unit 119 matches the business entrusted by the government with the company to be entrusted.
- FIG. 6 is a block diagram showing the configuration of the entrustee selection unit 119 in the modified example of the second embodiment.
- the consignee selection unit 119 includes a business information reception unit 1191 that receives input of information about the consignment business, and a consignee that extracts consignee candidates from past performance information of the business related to the consignment business. It includes a candidate extraction unit 1192 and a trustee identification unit 1193 that identifies a trustee from the trustee candidates extracted by the trustee candidate extraction unit 1192 .
- the business information reception unit 1191 receives input of information regarding the outsourced business through the input device 509 .
- the information on the commissioned project includes, for example, the period of the commissioned project, the performance index, and the amount of the success fee corresponding to the achievement level of the performance index.
- the success fee amount may be set in stages according to the achievement level of the performance indicator. For example, if the medical cost is reduced by 10%, the contingency fee is 10 million yen, and if the medical cost is reduced by 15%, the contingency fee is 15 million yen. It can be expensive.
- the consignee candidate extraction unit 1192 extracts information on corporate data (consignee candidates) having past results related to the performance index received by the business information reception unit 1191 through the network.
- the entrustee candidate extraction unit 1192 may, for example, extract past record information from administrative document management information registered in blockchains among a plurality of administrative agencies.
- the entrustee identification unit 1193 identifies the entrustee based on the past performance of the entrustee candidate extracted by the entrustee candidate extraction unit 1192 and the evaluation information for that performance.
- the evaluation information includes, for example, the achievement level of the evaluation index and the presence or absence of problems at the time of past consignment.
- the entrustee identification unit 1193 identifies the entrustee from among the entrustee candidates using the entrustee analysis model generated based on the content of the past performance and the evaluation information for the performance.
- This model is, for example, a model that, upon input of information on consignee candidates extracted by the consignee candidate extraction unit 1192, specifies and outputs the most suitable consignee out of the consignee candidates.
- This model is, for example, a model generated by a decision tree, neural network, regression model, deep learning neural network, or the like, and is stored in the storage device 505 .
- a model may be used in which, when information about a consignment business is input, an optimal consignee is output.
- a series of operations of accepting input of information about the outsourced business by the business information receiving unit 1191, extracting outsourcee candidate by the outsourcee candidate extracting unit 1192, and specifying the outsourcee by the outsourcee specifying unit 1193 are automatically executed. be done.
- the entrustee identification unit 1193 outputs the information about the entrustee identified in this way, using the output device 510, for example.
- the automatic calculation of the success fee and the automatic payment of the success fee may be performed by the smart contract after the commissioned work is completed.
- a smart contract is a mechanism that runs on a blockchain network and is triggered to perform a specific action when a specific condition is met.
- Payment of performance fees using smart contracts automatically calculates the amount of performance fees by inputting the results of performance indicators from the outsourced business into the blockchain by the outsourced business. paid to.
- the business information reception unit 1191 receives input of information on the commissioned business (step S211).
- the consignee candidate extracting unit 1192 extracts information on company data having past results related to the received outcome index as consignee candidates (step S212).
- the entrustee identification unit 1193 inputs information on the extracted entrustee candidates to the model to identify the entrustee (step S213). With this, the entrustee selection unit 119 ends the operation of entrustee selection.
- a consignee is identified using a consignee analysis model created based on past performance details and evaluation information for that performance. As a result, it is possible to select the most suitable business consignee.
- the optimization proposal device 110 does not have to include the result indicator reception unit 111 .
- the multiple operations are described in order in the form of a flowchart, the order of description does not limit the order in which the multiple operations are performed. Therefore, when implementing each embodiment, the order of the plurality of operations can be changed within a range that does not interfere with the content.
- an optimization target receiving means for receiving an input of an optimization target for achieving a target outcome index of the city; personal data receiving means for receiving input of personal data about a plurality of individuals belonging to the city; Based on the personal data received by the personal data receiving means, Personal data analysis means for analyzing requests of said plurality of said individuals; Individual classification means for classifying the individual based on the request analyzed by the personal data analysis means; an individual suggested action specifying means for specifying a suggested action for each of the individuals based on the classification by the individual classifying means; output means for outputting the suggested action to each of the identified individuals; an optimization proposal device.
- the individually suggested action specifying means uses a learned model generated by learning the classification classified by the individual classification means and the suggested action proposed for the classification as learning data to make a proposal to each of the individuals. 1.
- the optimization proposal device according to supplement 1, which identifies actions.
- Appendix 4 further comprising means for identifying proposed actions by classification for identifying, by classification, proposed actions for solving the optimization goal input by the optimization goal receiving means;
- the individually suggested action identifying means identifies the proposed action for each of the individuals by associating the classified suggested action identified by the classified suggested action identifying means with the classification by the individual classifying means.
- the individual classification means classifies the individual using a trained model generated by learning the personal data and a classification classified based on the personal data as learning data.
- the optimization proposal device according to any one of the above.
- appendix 8 The optimization proposal device according to any one of appendices 1 to 6, further comprising trustee selection means for selecting a trustee who prompts the suggested action proposed by the individually proposed action specifying means.
- the consignee selection means includes: business information reception means for receiving input of information on consignment business; consignee candidate extraction means for extracting consignee candidates from past performance information of businesses related to the consignment business; 9.
- the optimization proposal device according to appendix 8, further comprising a trustee specifying means for selecting a trustee from the trustee candidates extracted by the extracting means.
- (Appendix 12) Accepts input of optimization goals to achieve the city's target performance indicators, receiving input of personal data about a plurality of individuals belonging to said city; analyzing the requests of the plurality of individuals based on the received personal data; classify the individual based on the analyzed requirements; identifying a suggested action for each of said individuals based on said classification; An optimization proposal method outputting a suggested action for each of said identified individuals.
- (Appendix 13) Accepts input of optimization goals to achieve the city's target performance indicators, receiving input of personal data about a plurality of individuals belonging to said city; analyzing the requests of the plurality of individuals based on the received personal data; classify the individual based on the analyzed requirements; identifying a suggested action for each of said individuals by said classification; A recording medium storing a program that causes a computer to output suggested actions for each of the identified individuals.
Landscapes
- Engineering & Computer Science (AREA)
- Business, Economics & Management (AREA)
- Human Resources & Organizations (AREA)
- Strategic Management (AREA)
- Economics (AREA)
- Entrepreneurship & Innovation (AREA)
- Educational Administration (AREA)
- Game Theory and Decision Science (AREA)
- Development Economics (AREA)
- Marketing (AREA)
- Operations Research (AREA)
- Quality & Reliability (AREA)
- Tourism & Hospitality (AREA)
- Physics & Mathematics (AREA)
- General Business, Economics & Management (AREA)
- General Physics & Mathematics (AREA)
- Theoretical Computer Science (AREA)
- Management, Administration, Business Operations System, And Electronic Commerce (AREA)
Abstract
Description
図1は、第一の実施形態における最適化提案装置100の構成を示すブロック図である。第一の実施形態における最適化提案装置100は、個人の課題と都市指標の両方を改善するような行動を出力するシステムである。図1を参照すると、最適化提案装置100は、最適化目標受付部101、パーソナルデータ受付部102、パーソナルデータ分析部103、個別分類部104、個別提案行動特定部105及び出力部106を備える。以下、本実施形態の必須構成である最適化提案装置100について詳しく説明する。
第一の実施形態の変形例では、個別分類部104及び個別提案行動特定部105が、学習済みモデルを用いて、分類や個人に提案行動する内容を特定する。これらの学習済みモデルも、記憶装置505に格納されている。個別分類部104及び個別提案行動特定部105は、記憶装置505に格納されたテーブルを用いることに代えて、又はテーブルを用いると共に、学習済みモデルを用いて分類や個人に提案行動する内容を特定する。
次に、本開示の第二の実施形態について図面を参照して詳細に説明する。以下、本実施形態の説明が不明確にならない範囲で、前述の説明と重複する内容については説明を省略する。第二の実施形態における、最適化提案装置110の各実施形態における各構成要素は、図2に示すコンピュータ装置と同様に、その機能をハードウェア的に実現することはもちろん、プログラム制御に基づくコンピュータ装置、ファームウェアで実現することができる。
第二の実施形態における変形例について説明する。第二実施形態の個別提案行動特定部117によって特定された提案行動を個人に促す事業の委託先を選択する委託先選択部119を有する。第二の実施形態における変形例では、例えば、成果連動型民間委託契約方式(PFS:Pay For Success)等によって、自治体の活動を民間企業に委託する場合を想定する。すなわち、本変形例では、民間企業が、自治体が掲げる都市の目標となる成果指標を達成するための活動を実施する場合を想定している。委託先選択部119は、行政が委託する事業と、受託する企業とのマッチングを行う。
都市の目標となる成果指標を達成するための最適化目標の入力を受付する最適化目標受付手段と、
前記都市に属する複数の個人についてのパーソナルデータの入力を受付するパーソナルデータ受付手段と、
前記パーソナルデータ受付手段により受付された前記パーソナルデータに基づき、
前記複数の前記個人の要求を分析するパーソナルデータ分析手段と、
前記パーソナルデータ分析手段により分析された前記要求に基づき前記個人を分類する個別分類手段と、
前記個別分類手段による前記分類に基づいて、前記個人の各々への提案行動を特定する個別提案行動特定手段と、
前記特定された前記個人の各々への前記提案行動を出力する出力手段と、
を有する、最適化提案装置。
前記個別提案行動特定手段は、前記個別分類手段により分類された前記分類及び当該分類に対して提案した提案行動を学習データとして学習させることにより生成した学習済みモデルにより、前記個人の各々への提案行動を特定する、付記1に記載の最適化提案装置。
前記モデルは、前記個別提案行動特定手段において特定された前記提案行動について、前記個人の各々における承諾率に基づいて前記モデルを更新する、付記2に記載の最適化提案装置。
前記最適化目標受付手段により入力された最適化目標を解決するための提案行動を、分類別に特定する分類別提案行動特定手段を更に備え、
前記個別提案行動特定手段は、前記分類別提案行動特定手段において特定された分類別提案行動と前記個別分類手段による前記分類とを紐づけることにより、前記個人の各々への提案行動を特定する付記1に記載の最適化提案装置。
前記個別分類手段は、前記パーソナルデータと、当該パーソナルデータに基づいて分類された分類と、を学習データとして学習させることにより生成した学習済みモデルにより、前記個人の分類を行う、付記1~4のいずれかに記載の最適化提案装置。
前記都市の目標となる成果指標の入力を受付し、前記最適化目標へ変換する成果指標受付手段を更に備える、付記1~5のいずれかに記載の最適化提案装置。
前記出力手段は、前記個別提案行動特定手段により提案された前記提案行動を促す、付記1~6のいずれかに記載の最適化提案装置。
前記個別提案行動特定手段により提案された前記提案行動を促す委託先を選択する、委託先選択手段を更に備える付記1~6のいずれかに記載の最適化提案装置。
前記委託先選択手段は、委託事業に関する情報の入力を受け付ける事業情報受付手段と、委託事業に関連する事業の過去の実績情報から、委託先候補を抽出する委託先候補抽出手段と当該委託先候補抽出手段により抽出された委託先候補から委託先を選択する委託先特定手段とを含む、付記8に記載の最適化提案装置。
前記委託先候補抽出手段は、過去の実績情報を、行政文書管理情報に基づいて取得する付記9に記載の最適化提案装置。
前記委託先特定手段は、前記委託先を、過去の実績と当該実績に対する評価情報に基づいて生成されたモデルを用いて特定する、付記9又は付記10に記載の最適化提案装置。
都市の目標となる成果指標を達成するための最適化目標の入力を受付し、
前記都市に属する複数の個人についてのパーソナルデータの入力を受付し、
前記受付された前記パーソナルデータに基づき、前記複数の個人の要求を分析し、
前記分析された前記要求に基づき前記個人を分類し、
前記分類に基づいて、前記個人の各々への提案行動を特定し、
前記特定された前記個人の各々への提案行動を出力する、最適化提案方法。
都市の目標となる成果指標を達成するための最適化目標の入力を受付し、
前記都市に属する複数の個人についてのパーソナルデータの入力を受付し、
前記受付された前記パーソナルデータに基づき、前記複数の個人の要求を分析し、
前記分析された前記要求に基づき前記個人を分類し、
前記分類により、前記個人の各々への提案行動を特定し、
前記特定された前記個人の各々への提案行動を出力することをコンピュータに実行させるプログラムを格納する記録媒体。
101、112 最適化目標受付部
102、114 パーソナルデータ受付部
103、115 パーソナルデータ分析部
104、116 個別分類部
105、117 個別提案行動特定部
106、118 出力部
111 成果指標受付部
113 分類別提案行動特定部
119 委託先選択部
Claims (13)
- 都市の目標となる成果指標を達成するための最適化目標の入力を受付する最適化目標受付手段と、
前記都市に属する複数の個人についてのパーソナルデータの入力を受付するパーソナルデータ受付手段と、
前記パーソナルデータ受付手段により受付された前記パーソナルデータに基づき、
前記複数の前記個人の要求を分析するパーソナルデータ分析手段と、
前記パーソナルデータ分析手段により分析された前記要求に基づき前記個人を分類する個別分類手段と、
前記個別分類手段による前記分類に基づいて、前記個人の各々への提案行動を特定する個別提案行動特定手段と、
前記特定された前記個人の各々への前記提案行動を出力する出力手段と、
を有する、最適化提案装置。 - 前記個別提案行動特定手段は、前記個別分類手段により分類された前記分類及び当該分類に対して提案した提案行動を学習データとして学習させることにより生成した学習済みモデルにより、前記個人の各々への提案行動を特定する、請求項1に記載の最適化提案装置。
- 前記モデルは、前記個別提案行動特定手段において特定された前記提案行動について、前記個人の各々における承諾率に基づいて前記モデルを更新する、請求項2に記載の最適化提案装置。
- 前記最適化目標受付手段により入力された最適化目標を解決するための提案行動を、分類別に特定する分類別提案行動特定手段を更に備え、
前記個別提案行動特定手段は、前記分類別提案行動特定手段において特定された分類別提案行動と前記個別分類手段による前記分類とを紐づけることにより、前記個人の各々への提案行動を特定する請求項1に記載の最適化提案装置。 - 前記個別分類手段は、前記パーソナルデータと、当該パーソナルデータに基づいて分類された分類と、を学習データとして学習させることにより生成した学習済みモデルにより、前記個人の分類を行う、請求項1~4のいずれか一項に記載の最適化提案装置。
- 前記都市の目標となる成果指標の入力を受付し、前記最適化目標へ変換する成果指標受付手段を更に備える、請求項1~5のいずれか一項に記載の最適化提案装置。
- 前記出力手段は、前記個別提案行動特定手段により提案された前記提案行動を促す、請求項1~6のいずれか一項に記載の最適化提案装置。
- 前記個別提案行動特定手段により提案された前記提案行動を促す委託先を選択する、委託先選択手段を更に備える請求項1~6のいずれか一項に記載の最適化提案装置。
- 前記委託先選択手段は、委託事業に関する情報の入力を受け付ける事業情報受付手段と、委託事業に関連する事業の過去の実績情報から、委託先候補を抽出する委託先候補抽出手段と当該委託先候補抽出手段により抽出された委託先候補から委託先を選択する委託先特定手段とを含む、請求項8に記載の最適化提案装置。
- 前記委託先候補抽出手段は、過去の実績情報を、行政文書管理情報に基づいて取得する請求項9に記載の最適化提案装置。
- 前記委託先特定手段は、前記委託先を、過去の実績と当該実績に対する評価情報に基づいて生成されたモデルを用いて特定する、請求項9又は請求項10に記載の最適化提案装置。
- 都市の目標となる成果指標を達成するための最適化目標の入力を受付し、
前記都市に属する複数の個人についてのパーソナルデータの入力を受付し、
前記受付された前記パーソナルデータに基づき、前記複数の個人の要求を分析し、
前記分析された前記要求に基づき前記個人を分類し、
前記分類に基づいて、前記個人の各々への提案行動を特定し、
前記特定された前記個人の各々への提案行動を出力する、最適化提案方法。 - 都市の目標となる成果指標を達成するための最適化目標の入力を受付し、
前記都市に属する複数の個人についてのパーソナルデータの入力を受付し、
前記受付された前記パーソナルデータに基づき、前記複数の個人の要求を分析し、
前記分析された前記要求に基づき前記個人を分類し、
前記分類により、前記個人の各々への提案行動を特定し、
前記特定された前記個人の各々への提案行動を出力することをコンピュータに実行させるプログラムを格納する記録媒体。
Priority Applications (2)
Application Number | Priority Date | Filing Date | Title |
---|---|---|---|
JP2023529412A JPWO2022269908A5 (ja) | 2021-06-25 | 最適化提案システム、最適化提案方法、及びプログラム | |
PCT/JP2021/024163 WO2022269908A1 (ja) | 2021-06-25 | 2021-06-25 | 最適化提案システム、最適化提案方法、及び記録媒体 |
Applications Claiming Priority (1)
Application Number | Priority Date | Filing Date | Title |
---|---|---|---|
PCT/JP2021/024163 WO2022269908A1 (ja) | 2021-06-25 | 2021-06-25 | 最適化提案システム、最適化提案方法、及び記録媒体 |
Publications (1)
Publication Number | Publication Date |
---|---|
WO2022269908A1 true WO2022269908A1 (ja) | 2022-12-29 |
Family
ID=84543723
Family Applications (1)
Application Number | Title | Priority Date | Filing Date |
---|---|---|---|
PCT/JP2021/024163 WO2022269908A1 (ja) | 2021-06-25 | 2021-06-25 | 最適化提案システム、最適化提案方法、及び記録媒体 |
Country Status (1)
Country | Link |
---|---|
WO (1) | WO2022269908A1 (ja) |
Citations (5)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
JP2005129023A (ja) * | 2003-09-30 | 2005-05-19 | Japan Research Institute Ltd | 行政管理支援方法、その方法をコンピュータに実行させるプログラムおよび行政管理支援システム |
JP2006146858A (ja) * | 2004-11-23 | 2006-06-08 | Hiroki Shima | プロファイリング手段を適用した社会シミュレーション・システム |
WO2010052845A1 (ja) * | 2008-11-04 | 2010-05-14 | 株式会社日立製作所 | 情報処理システム及び情報処理装置 |
JP2017208005A (ja) * | 2016-05-20 | 2017-11-24 | 株式会社日立製作所 | センサデータ分析システム及びセンサデータ分析方法 |
JP2018005539A (ja) * | 2016-07-01 | 2018-01-11 | 沖電気工業株式会社 | 情報処理装置、情報処理方法およびプログラム |
-
2021
- 2021-06-25 WO PCT/JP2021/024163 patent/WO2022269908A1/ja active Application Filing
Patent Citations (5)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
JP2005129023A (ja) * | 2003-09-30 | 2005-05-19 | Japan Research Institute Ltd | 行政管理支援方法、その方法をコンピュータに実行させるプログラムおよび行政管理支援システム |
JP2006146858A (ja) * | 2004-11-23 | 2006-06-08 | Hiroki Shima | プロファイリング手段を適用した社会シミュレーション・システム |
WO2010052845A1 (ja) * | 2008-11-04 | 2010-05-14 | 株式会社日立製作所 | 情報処理システム及び情報処理装置 |
JP2017208005A (ja) * | 2016-05-20 | 2017-11-24 | 株式会社日立製作所 | センサデータ分析システム及びセンサデータ分析方法 |
JP2018005539A (ja) * | 2016-07-01 | 2018-01-11 | 沖電気工業株式会社 | 情報処理装置、情報処理方法およびプログラム |
Also Published As
Publication number | Publication date |
---|---|
JPWO2022269908A1 (ja) | 2022-12-29 |
Similar Documents
Publication | Publication Date | Title |
---|---|---|
US11600390B2 (en) | Machine learning clinical decision support system for risk categorization | |
US20230054513A1 (en) | Systems and methods for healthcare provider dashboards | |
Gul et al. | An exhaustive review and analysis on applications of statistical forecasting in hospital emergency departments | |
Srinivas et al. | Optimizing outpatient appointment system using machine learning algorithms and scheduling rules: A prescriptive analytics framework | |
Malik et al. | Data mining and predictive analytics applications for the delivery of healthcare services: a systematic literature review | |
Marcus et al. | Artificial intelligence and machine learning for HIV prevention: emerging approaches to ending the epidemic | |
US10380698B2 (en) | Segmentation platform | |
CN112258163A (zh) | 养老管理***及方法、计算机存储介质、电子设备 | |
KR102338964B1 (ko) | 학습 기반의 증상 및 질환 관리 장치 및 방법 | |
Meinert et al. | The technological imperative for value-based health care | |
Elalouf et al. | Minimizing operational costs by restructuring the blood sample collection chain | |
Safdar et al. | Genetic algorithm based automatic out-patient experience management system (GAPEM) using RFIDs and sensors | |
Habel et al. | A theory of predictive sales analytics adoption | |
Prentzas et al. | Assessment of life insurance applications: an approach integrating neuro‐symbolic rule‐based with case‐based reasoning | |
US20200219610A1 (en) | System and method for providing prediction models for predicting a health determinant category contribution in savings generated by a clinical program | |
WO2022269908A1 (ja) | 最適化提案システム、最適化提案方法、及び記録媒体 | |
Wang et al. | Combining design science with data analytics to forecast user intention to adopt customer relationship management systems | |
CN114693461A (zh) | 基于机器学习的城市普惠保险的风险影响因子获取方法 | |
KR102502199B1 (ko) | 노인장기요양보험 통합 관리 서비스 제공 방법, 장치 및 컴퓨터프로그램 | |
Theilig et al. | Employing environmental data and machine learning to improve mobile health receptivity | |
KR102430418B1 (ko) | 반려동물을 위한 빅데이터 기반의 서비스 제공 방법 및 장치 | |
Al-Mashraie | Simulation-based evaluation of no-show prediction using deep learning neural networks | |
JP2020144642A (ja) | 営業支援システムおよび営業支援プログラム | |
US20240232782A1 (en) | Secure computing system, business operator server, information processing system, secure computing method, and recording medium | |
CN114549078B (zh) | 基于时序的客户行为处理方法、装置及相关设备 |
Legal Events
Date | Code | Title | Description |
---|---|---|---|
121 | Ep: the epo has been informed by wipo that ep was designated in this application |
Ref document number: 21947190 Country of ref document: EP Kind code of ref document: A1 |
|
WWE | Wipo information: entry into national phase |
Ref document number: 2023529412 Country of ref document: JP |
|
WWE | Wipo information: entry into national phase |
Ref document number: 18572854 Country of ref document: US |
|
NENP | Non-entry into the national phase |
Ref country code: DE |
|
122 | Ep: pct application non-entry in european phase |
Ref document number: 21947190 Country of ref document: EP Kind code of ref document: A1 |