Claims
- 1. A method for automated decision-making comprising the steps of:
(a) modeling of relations between a plurality of objects, each object having at least one outcome, each object being subjected to at least one influential factor affecting said at least one outcome; (b) data mining in datasets associated with said modeled relations between said at least one outcome and said at least one influential factor of at least one said object; (c) building a quantitative model to predict a score for said at least one outcome, and (d) making a decision according to said score of said at least one outcome of said at least one object.
- 2. The method as in claim 1 wherein said modeling of relations comprises:
(i) selecting at least two said objects; (ii) for each of said at least two object, defining at least one outcome; (iii) for each of said at least one outcome, identifying at least one influential factor; (iv) validating an influence of said at least one possible influential factor on each of said at least one outcome respectively and, (v) symbolizing graphically said at least two objects, said outcomes of said at least two objects and said influences of said outcomes of said at least two objects.
- 3. The method as in claim 2 wherein said selecting of said at least two objects is based on knowledge selected from the group consisting of disciplinary knowledge and structural knowledge that are appropriate for a specific functional operation.
- 4. The method as in claim 2 wherein said disciplinary knowledge is selected from the group consisting of warehouse data and expert experience.
- 5. The method as in claim 2 wherein said structural knowledge is selected from the group consisting of functional, configurational, logical and heuristic structure.
- 6. The method as in claim 2 wherein said at least one outcome of a said at least one object is defined by an expert having expertise in a domain of said at least one object.
- 7. The method as in claim 2 wherein said at least one influential factor on said at least one outcome of said at least one object is defined by an expert having expertise in a domain of said at least one object.
- 8. The method as in claim 2 wherein said validating of an influence of said at least one possible influential factor on said at least one outcome includes seeking for a correlation between said at least one possible influential factor and said at least one outcome.
- 9. The method as in claim 2 wherein one of said at least one outcomes of a first said object is an influence on one of said at least one outcomes of a second said object.
- 10. The method as in claim 2 wherein said graphical symbolization is stored in a memory of a computer.
- 11. The method as in claim 1 wherein said data mining is effected using statistical techniques selected from the group consisting of linear regression, nearest neighbor, clustering, process output empirical modeling (POEM), classification and regression tree (CART), chi-square automatic interaction detector (CHAID), decision trees and neural network empirical modeling.
- 12. The method as in claim 1 wherein said building of said quantitative model is effected using statistical techniques selected from the group consisting of linear regression, nearest neighbor, clustering, process output empirical modeling (POEM), classification and regression tree (CART), chi-square automatic interaction detector (CHAID), decision trees and neural network empirical modeling.
- 13. A knowledge engineering tool for describing a relationship pattern among plurality of objects comprising a graphical symbolization of the objects and their assumed interactions, said graphical symbolization including at least one interconnection cell which represents a component of a system whose relationship pattern is described by the knowledge engineering tool.
- 14. The knowledge engineering tool as in claim 13 wherein the tool is used for dimension reduction of data mining.
- 15. The knowledge engineering tool as in claim 13 wherein said component of said system is selected from the group consisting of physical and logical elements of said system.
- 16. The knowledge engineering tool as in claim 13 having a plurality of said interconnection cells organized according to an a priori structural knowledge of said system.
- 17. The knowledge engineering tool as in claim 16 wherein said a priori structural knowledge of said system is derived from information selected from the group consisting of warehouse data and expert experience.
- 18. The knowledge engineering tool as in claim 16 wherein said a priori structural knowledge of said system is derived from knowledge selected from the group consisting of functional, configurational, logical and heuristic structure of said system.
- 19. The knowledge engineering tool as in claim 16 wherein said a priori structural knowledge is derived from means which are selected from the group consisting of process flow diagrams, process maps and layout drawings of said system.
- 20. The knowledge engineering tool as in claim 13 wherein said at least one interconnection cell has at least one output which represents an outcome of an object symbolized by said at least one interconnection cell.
- 21. The knowledge engineering tool as in claim 20 wherein said at least one interconnection cell has at least one input which represents an influential factor on said at least one output of said at least one interconnection cell.
- 22. The knowledge engineering tool as in claim 20 wherein said at least one output is selected from the group consisting of measurable output and controlled output.
- 23. The knowledge engineering tool as in claim 21 wherein said at least one input is selected from the group consisting of measurable input and controlled input.
- 24. The knowledge engineering tool as in claim 21 including at least two interconnection cells and in which said output of a first of said at least two interconnection cells is an input to a second of said at least two interconnection cells.
- 25. The knowledge engineering tool as in claim 21 wherein a controllable output of said first interconnection cell is a measurable input to said second interconnection cell.
- 26. The knowledge engineering tool as in claim 21 wherein said at least one input is an inner interrelated input.
- 27. The knowledge engineering tool as in claim 21 wherein said at least one input is a non obvious outside influential input.
- 28. A computer usable medium having a computer readable program code, the program code uses a graphical representation of a Knowledge-Tree map to generate a knowledge base in a data storage region of a computer.
- 29. The computer usable medium as in claim 28 wherein said program code is a sub-routine of a program of an automatic decision-making process.
- 30. The computer usable medium as in claim 29 wherein said automatic decision-making process is a part of a process control.
- 31. The computer usable medium as in claim 29 wherein said automatic decision-making process is suitable for a diagnostic expert system.
- 32. The computer usable medium as in claim 29 wherein said automatic decision-making process is suitable to trouble-shoot a process output.
- 33. The computer usable medium as in claim 29 wherein said automatic decision-making process is part of a microelectronics device fabrication process.
- 34. An automatic decision-making system comprising of:
(a) a data mining tool for correlating between an outcome and an influential factor on the outcome; (b) a Knowledge-Tree map to reduce a dimension of said data mining; (c) an empirical modeler to predict a score of said outcome and, (d) a decision making tool in accordance with said score.
- 35. A system as in claim 34 wherein said data mining uses statistical techniques selected from the group consisting of linear regression, nearest neighbor, clustering, process output empirical modeling (POEM), classification and regression tree (CART), chi-square automatic interaction detector (CHAID), decision trees and neural network empirical modeling.
- 36. A system as in claim 34 wherein said Knowledge-Tree is a knowledge engineering tool for describing relationship pattern between plurality of objects, comprising a graphical symbolization of the objects and their relations, said graphical symbolization includes at least one interconnection cell which represents a component of a system whose said relationship pattern being described by said knowledge engineering tool.
- 37. A system as in claim 34 wherein said empirical modeler uses statistical techniques selected from the group consisting of linear regression, nearest neighbor, clustering, process output empirical modeling (POEM), classification and regression tree (CART), chi-square automatic interaction detector (CHAID), decision trees and neural network empirical modeling.
Parent Case Info
[0001] This is a continuation-in-part of U.S. application Ser. No. 09/588,681 filed Jun. 7, 2000.
[0002] Besides being a continuation-in-part of U.S. application Ser. No. 09/588,681 filed Jun. 7, 2000, incorporated by reference for all purpose as if fully set fourth herein, the present invention is also related to the following co-pending patent applications of Goldman, et al. which utilize it's teaching:
[0003] U.S. Patent application Ser. No. 09/633,824 filed Aug. 7, 2000, and U.S. patent application entitled-“System and Method for Monitoring Process Quality Control” filed Oct. 13, 2000 (hereinafter the POEM Application) which are both incorporated by reference for all purposes as if fully set forth herein.
Continuation in Parts (1)
|
Number |
Date |
Country |
Parent |
09588681 |
Jun 2000 |
US |
Child |
09731978 |
Dec 2000 |
US |