html5-img
1 / 29

Case Based Reasoning

Outline. Case RepresentationNearest Neighbour RetrievalCalculating similaritySimilarity in CBR-WorksReading. R4 Cycle. . . . . REUSEpropose solutions from retrieved cases. REVISEadapt and repairproposed solution. CBR. RETAINintegrate incase-base. . . RETRIEVEfind similar problems. CBR As

taima
Télécharger la présentation

Case Based Reasoning

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


    1. Case Based Reasoning Lecture 2: CBR Case Retrieval

    2. Outline Case Representation Nearest Neighbour Retrieval Calculating similarity Similarity in CBR-Works Reading

    3. R4 Cycle

    4. CBR Assumption New problem can be solved by retrieving similar problems adapting retrieved solutions Similar problems have similar solutions

    5. Car Diagnosis Example Symptoms are observed Engine does not start Battery voltage = 7v Goal Cause of failure: flat battery Repair strategy: charge battery

    6. Case-Based Diagnosis Case describes diagnostic situation Description of symptoms Description of fault Description of repair strategy Case-base stores a collection of cases CBR finds case in case-base similar to new symptoms Re-uses diagnosis of fault repair strategy

    7. Car Diagnosis Case Each case describes one diagnostic situation Described by a list of features Contains a list of feature values Problem Symptom: headlight does not work Car: Ford Mondeo Year: 2001 Solution Diagnosis: headlight fuse blown Repair: replace headlight fuse This is not a rule - why not? Battery: 10.4v Headlights: undamaged HeadlightSwitch: on

    8. Car Diagnosis Case-Base A collection of independent cases Problem Symptom: headlight does not work Car: Ford Mondeo Year: 2001 Solution Diagnosis: headlight fuse blown Repair: replace headlight fuse Problem Symptom: headlight does not work Car: Ford Ka Year: 2003 Solution Diagnosis: defective bulb Repair: replace headlight Battery: 10.4v Headlights: undamaged HeadlightSwitch: on Battery: 9.5v Headlights: surface damage HeadlightSwitch: on

    9. Case Representation Depends on problem domain Flat structure A list of feature values (car diagnosis example) Easy to store and retrieve Specialised representations Graphs - nodes and arcs Plans - partially ordered set of actions Object-oriented - objects (instances of classes) More difficult to store and retrieve

    10. Case Representation Object-oriented representation: A case is a set of objects An object is described by a set of features Classes are arranged in a hierarchy Relations between objects (e.g. part-of) Combine similarities of parts

    11. New Car Diagnosis Problem A new problem is a case without a solution part Not all problem features must be known same for cases Problem Symptom: brakelight does not work Car: Ford Fiesta Year: 1997 Battery: 9.2v Headlights: undamaged HeadlightSwitch: ?

    12. Compare new problem to each case Select most similar Similarity is most important concept in CBR When are two cases similar? How are cases ranked according to similarity? Similarity of cases Similarity for each feature Depends on feature values Retrieving A Car Diagnosis Case

    13. Nearest Neighbour Retrieval Retrieve most similar k-nearest neighbour (k-NN) like scoring in bowls or curling Example

    14. Calculating Feature Similarity Distances between values of individual features problem and case have values p and c for feature f Distance for Numeric features df(problem,case) = |p - c|/(max difference) Distance for Symbolic features df(problem,case) = 0 if p = c = 1 otherwise Similarityf(problem,case) = 1 - d Degree of similarity is between 0 and 1

    15. Calculating Case Similarity Similarity(problem,case) = weighted sum of Similarityf(problem,case) for all features f High importance features have large weight symptom, battery, headlights weight = 6 Low importance features have low weight car, year weight = 1 Case similarity = si is similarity of ith feature wi is weight of ith feature

    16. New Problem and Case 1 New Problem Symptom: brakelight does not work Car: Ford Fiesta Year: 1997 Battery: 9.2v Headlights: undamaged HeadlightSwitch: ? weight = 6 1 Problem Symptom: headlight does not work Car: Ford Mondeo Year: 2001 Battery: 10.4v Headlights: undamaged HeadlightSwitch: on Solution Diagnosis: headlight fuse blown Repair: replace headlight fuse

    17. New Problem and Case 2 New Problem Symptom: brakelight does not work Car: Ford Fiesta Year: 1997 Battery: 9.2v Headlights: undamaged HeadlightSwitch: ? weight = 6 1 Problem Symptom: headlight does not work Car: Ford Ka Year: 2003 Battery: 9.5v Headlights: surface damage HeadlightSwitch: on Solution Diagnosis: defective bulb Repair: replace headlight

    18. Reuse Solution from Case 1 New Problem Symptom: brakelight does not work Car: Ford Fiesta Year: 1997 Battery: 9.2v Headlights: undamaged HeadlightSwitch: ? Problem Symptom: headlight does not work Solution Diagnosis: headlight fuse blown Repair: replace headlight fuse Solution to New Problem Diagnosis: headlight fuse blown Repair: replace headlight fuse After Adaptation Diagnosis: brakelight fuse blown Repair: replace brakelight fuse

    19. CBR-Works Similarity Calculation in tool used in the Lab Unordered Symbols Ordered Symbols Numbers Intervals Strings Taxonomy

    20. Symbols (Unordered) Similarity defined by developer Similarity values stored in a decision table

    21. Symmetric vs Asymmetric Similarity In symmetric similarity the result is independent of the role of the values being compared Sim (amber, green) = 0.8 Sim (green, amber) = 0.8 In asymmetric similarity the role is important Sim (amber, green) = 0.3 Sim (green, amber) = 0.8

    22. Ordered Symbols The symbols are mapped to a numeric range

    23. Numbers df(query,case) = |q - c|/range Similarityf(query,case) = 1 d Example: Query (New Problem): Mileage = 60,000 Case: Mileage = 50,000 Range (Mileage) = 0..100,000 dMileage(query,case) = |60,000 50,000|/10,0000 = 0.1 SimilarityMileage(query,case) = 1 0.1 = 0.9

    24. Intervals if the intervals in query and case do not intersect the similarity is higher the closer the gap if the intervals intersect the similarity is higher the closer the bounds if the case completely covers the query the similarity is 1 if the query completely covers the case the similarity is higher the closer the bounds

    25. Strings exact match: two strings are similar if they are spelled the same way spelling check: compares the number of letters which are the same in two strings (Useful for strings consisting of one word only) word-count: counts the number of matching words of two cases. (Useful for strings consisting of several words).

    26. Taxonomy A classification hierarchy defines similarity for concepts Inner nodes of the tree are assigned similarity values Leaves under a node will share the nodes similarity

    27. Example from CBR-Works

    28. Example from CBR-Works dMileage(query,case1) = |60000 - 50000|/(100000) =0.1 SMileage(query,case1) = 1 0.1 = 0.9 dTowbar(query,case1) = 0 STowbar(query,case1) = 1 0 = 1 S(query,case1) = (0.9 + 1) / (1 + 1) = 0.95 Note that the missing values (?) do not contribute to the calculation

    29. Reading Text D.B. Leake. Case-Based Reasoning: Experiences, Lessons and Future Directions. MIT Press,1996. Seminal Paper A. Aamodt & E. Plaza. Case-based Reasoning: Foundational Issues, Methodological Variations, and System Approaches. AICOM 7(1):39-59, 1994. ftp://ftp.ifi.ntnu.no/pub/Publikasjoner/vitenskaplige-artikler/aicom-94.pdf

More Related