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CS 430: Information Discovery

CS 430: Information Discovery. Lecture 9 Extending the Boolean Model. Course Administration. Query languages. How would you formulate the following? What legal actions have resulted from the destruction of Pan Am Flight 103 over Lockerbie, Scotland, on December 21, 1988?

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CS 430: Information Discovery

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  1. CS 430: Information Discovery Lecture 9 Extending the Boolean Model

  2. Course Administration

  3. Query languages How would you formulate the following? What legal actions have resulted from the destruction of Pan Am Flight 103 over Lockerbie, Scotland, on December 21, 1988? Documents describing any charges, claims, or fines presented to or imposed by any court or tribunal are relevant, but documents that discuss charges made in diplomatic jousting are not relevant.

  4. Query languages: Boolean operators 1. Documents containing both "information" and "retrieval" information and retrieval 2. Documents containing "information" or "retrieval" or both information or retrieval 3. Documents containing "information" or "retrieval" but not both (information or retrieval) and not (information and retrieval)

  5. Query languages: proximity operators 1. Documents containing phrase "information retrieval" information adj retrieval 2. Documents containing "information" and "retrieval" within four words of each other information near 4 retrieval By convention, stop words and punctuation are ignored. swan adj 41 matches "John Swan, 41 Main Street." information adj retrieval matches " ... information on retrieval methods ..."

  6. Query languages: pattern matching Prefix: "comp?" matches any word beginning "comp" Suffix: "?tal" matches any word ending "tal" Ranges: "1920...1925" matches any number between 1920 and 1925

  7. Query languages: regular expressions Regular expression: A pattern built up by simple strings (which are matched as substrings) and operators Union: If e1 and e2 are regular expressions, then (e1 | e2) matches whatever matches e1 or e2. Concatenation: If e1 and e2 are regular expressions, the occurrences of (e1e2) are formed by the occurrences of e1 followed immediately by e2. Repetition: If e is a regular expression, then e* matches a sequence of zero or more contiguous occurrences of e.

  8. Regular expression examples (wild card) matches "wildcard" travel l* ed matches "traveled" or "travelled", but not "traveed" 192 (0 | 1 | 2 | 3 |4 |5)matches any string in the range "1920" to "1925"

  9. Problems with the Boolean model Counter-intuitive results: Query q = A and B and C and D and E Document d has terms A, B, C and D, but not E Intuitively, d is quite a good match for q, but it is rejected by the Boolean model. Query q = A or B or C or D or E Document d1 has terms A, B, C,D and E Document d2 has term A, but not B, C,D or E Intuitively, d1 is a much better match than d2, but the Boolean model ranks them as equal.

  10. Problems with the Boolean model (continued) Boolean is all or nothing • Boolean model has no way to rank documents. • Boolean model allows for no uncertainty in assigning index terms to documents. • The Boolean model has no provision for assigning weights to the importance of query terms.

  11. Boolean model as sets d and q are either in the set A or not in A. There is no halfway! q d A

  12. Extending the Boolean model Term weighting • Give weights to terms in documents and/or queries. • Combine standard Boolean retrieval with vector ranking of results Fuzzy sets • Relax the boundaries of the sets used in Boolean retrieval

  13. Ranking methods in Boolean systems SIRE (Syracuse Information Retrieval Experiment) Term weights • Add term weights to documents Weights calculated by the standard method of term frequency * inverse document frequency. Ranking • Calculate results set by standard Boolean methods • Rank results by vector distances

  14. Relevance feedback in SIRE SIRE (Syracuse Information Retrieval Experiment) Relevance feedback is particularly important with Boolean retrieval because it allow the results set to be expanded • Results set is created by standard Boolean retrieval • User selects one document from results set • Other documents in collection are ranked by vector distance from this document

  15. Boolean model as fuzzy sets q is more or less in A. There is a halfway! q d A

  16. Basic concept • A document has a term weight associated with each index term. The term weight measures the degree to which that term characterizes the document. • Term weights are in the range [0, 1]. (In the standard Boolean model all weights are either 0 or 1.) • For a given query, calculate the similarity between the query and each document in the collection. • This calculation is needed for every document that has a non-zero weight for any of the terms in the query.

  17. MMM: Mixed Min and Max model Fuzzy set theory dAis the degree of membership of an element to set A intersection (and) dAB = min(dA, dB) union (or) dAB = max(dA, dB)

  18. MMM: Mixed Min and Max model Fuzzy set theory example standard fuzzy set theory set theory dA1 1 0 0 0.5 0.5 0 0 dB 1 0 1 0 0.7 0 0.7 0 and dAB1 0 0 0 0.5 0 0 0 or dAB 1 1 1 0 0.7 0.5 0.7 0

  19. MMM: Mixed Min and Max model Terms: A1, A2, . . . , An DocumentD, with index-term weights: dA1, dA2, . . . , dAn Qor = (A1or A2or . . . or An) Query-document similarity: S(Qor, D) = Cor1 * max(dA1, dA2,.. , dAn) + Cor2 * min(dA1, dA2,.. , dAn) where Cor1 + Cor2 = 1

  20. MMM: Mixed Min and Max model Terms: A1, A2, . . . , An DocumentD, with index-term weights: dA1, dA2, . . . , dAn Qand = (A1and A2and . . . and An) Query-document similarity: S(Qand, D) = Cand1 * min(dA1,.. , dAn) + Cand2 * max(dA1,.. , dAn) where Cand1 + Cand2 = 1

  21. MMM: Mixed Min and Max model Experimental values: Cand1 in range [0.5, 0.8] Cor1 > 0.2 Computational cost is low. Retrieval performance much improved.

  22. Paice Model Paice model is a relative of the MMM model. The MMM model considers only the maximum and minimum document weights. The Paice model takes into account all of the document weights. Computational cost is higher than from MMM. Retrieval performance is improved. See Frake, pages 396-397 for more details

  23. P-norm model Terms: A1, A2, . . . , An DocumentD, with term weights: dA1, dA2, . . . , dAn Query terms are given weights, a1, a2, . . . ,an, which indicate their relative importance. Operators have coefficients that indicate their degree of strictness Query-document similarity is calculated by considering each document and query as a point in n space. See Frake, pages 397-398 for details

  24. Test data CISI CACM INSPEC P-norm 79 106 210 Paice 77 104 206 MMM 68 109 195 Percentage improvement over standard Boolean model (average best precision) Lee and Fox, 1988

  25. Reading E. Fox, S. Betrabet, M. Koushik, W. Lee, Extended Boolean Models, Frake, Chapter 15 Methods based on fuzzy set concepts

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