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Distance functions and IE -2

Distance functions and IE -2. William W. Cohen CALD. Announcements. March 25 Thus – talk from Carlos Guestrin (Assistant Prof in Cald as of fall 2004) on max-margin Markov nets 9:30 am in NSH 1507 open to public - tell your friends! Datasets:

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Distance functions and IE -2

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  1. Distance functions and IE -2 William W. Cohen CALD

  2. Announcements • March 25 Thus – talk from Carlos Guestrin (Assistant Prof in Cald as of fall 2004) on max-margin Markov nets • 9:30 am in NSH 1507 • open to public - tell your friends! • Datasets: • some public extraction data is (I hope readable) on /afs/cs/project/extract-learn/repository • Writeups: • nothing today • “distance metrics for text” – three papers - due next Monday, 3/22

  3. Record linkage: definition • Record linkage: determine if pairs of data records describe the same entity • I.e., find record pairs that are co-referent • Entities: usually people (or organizations or…) • Data records: names, addresses, job titles, birth dates, … • Main applications: • Joining two heterogeneous relations • Removing duplicates from a single relation

  4. The data integration problem • Control flow (modulo details about querying • Extract (author, department) pairs from DB1 • Extract (department ,www server) pairs from DB2 • Execute the two-step plan to get paper: • author -> department -> wwwServer • two steps means matching (linking, integrating, deduping, ....) department names in DB1/DB2 • issues are completely different if user is executing a one-step plan: • one-step plan is retrieval

  5. String distance metrics: Levenshtein • Edit-distance metrics • Distance is shortest sequence of edit commands that transform s to t. • Simplest set of operations: • Copy character from s over to t • Delete a character in s (cost 1) • Insert a character in t (cost 1) • Substitute one character for another (cost 1) • This is “Levenshtein distance”

  6. Computing Levenshtein distance – 4 D(i-1,j-1) + d(si,tj) //subst/copy D(i-1,j)+1 //insert D(i,j-1)+1 //delete D(i,j) = min A trace indicates where the min value came from, and can be used to find edit operations and/or a best alignment (may be more than 1)

  7. Smith-Waterman distance - 2 0 //start over D(i-1,j-1) - d(si,tj) //subst/copy D(i-1,j) - G //insert D(i,j-1) - G //delete D(i,j) = max G = 1 d(c,c) = -2 d(c,d) = +1

  8. Smith-Waterman distance - 3 0 //start over D(i-1,j-1) - d(si,tj) //subst/copy D(i-1,j) - G //insert D(i,j-1) - G //delete D(i,j) = max G = 1 d(c,c) = -2 d(c,d) = +1

  9. c o h e n d o r f m 0 0 0 0 0 0 0 0 0 c 1 0 0 0 0 0 0 0 0 c 0 0 0 0 0 0 0 0 0 o 0 2 1 0 0 0 2 1 0 h 0 1 4 3 2 1 1 1 0 n 0 0 3 3 5 4 3 2 1 s 0 0 2 2 4 4 3 2 1 k 0 0 1 1 3 3 3 2 1 i 0 0 0 0 2 2 2 2 1 dist=5 Smith-Waterman distance - 5

  10. Smith-Waterman distance in Monge & Elkan’s WEBFIND (1996) • String s=A1 A2 ... AK, string t=B1 B2 ... BL • sim’ is editDistance scaled to [0,1] • Monge-Elkan’s “recursive matching scheme” is average maximal similarity of Aito Bj:

  11. Results: S-W from Monge & Elkan

  12. Affine gap distances • Smith-Waterman fails on some pairs that seem quite similar: William W. Cohen William W. ‘Don’t call me Dubya’ Cohen Intuitively, a single long insertion is “cheaper” than a lot of short insertions Intuitively, are springlest hulongru poinstertimon extisn’t “cheaper” than a lot of short insertions

  13. Affine gap distances - 2 • Idea: • Current cost of a “gap” of n characters: nG • Make this cost: A + (n-1)B, where A is cost of “opening” a gap, and B is cost of “continuing” a gap.

  14. D(i-1,j) - A IS(i-1,j) - B Best score in which si is aligned with a ‘gap’ IS(i,j) = max Best score in which tj is aligned with a ‘gap’ D(i,j-1) - A IT(i,j-1) - B IT(i,j) = max Affine gap distances - 3 D(i-1,j-1) + d(si,tj) IS(I-1,j-1) + d(si,tj) IT(I-1,j-1) + d(si,tj) D(i-1,j-1) + d(si,tj) //subst/copy D(i-1,j)-1 //insert D(i,j-1)-1 //delete D(i,j) = max

  15. Affine gap distances - 4 -B IS -d(si,tj) -A D -d(si,tj) -A -d(si,tj) -B IT

  16. Affine gap distances – experiments (from McCallum,Nigam,Ungar KDD2000) • Goal is to match data like this:

  17. Affine gap distances – experiments (from McCallum,Nigam,Ungar KDD2000) • Hand-tuned edit distance • Lower costs for affine gaps • Even lower cost for affine gaps near a “.” • HMM-based normalization to group title, author, booktitle, etc into fields (as in Borkar et al)

  18. Affine gap distances – experiments

  19. TFIDF distance for data integration Experiments with WHIRL

  20. Three ways to deal with output of IE systems • Method 1. • Do the best you can at mapping the output into a conventional database (or KR system) with a natural schema (info about people, events, etc) • Answer any questions with the existing DB • Method 2. • Given a query, try and see how much the answer can be constrained by information derived from IE (somehow or other • Probably requires some sort of uncertain reasoning.

  21. Birds: r(birdName,soundDescription) and 5 short descriptions of sounds (“an owl hooting”) • Movies r(movieName,review) and 5 long, 5 short plot descriptions (“sci-fi comedy”, “serious czech movie”, ...)

  22. Soft joins with “incompatible schemas”

  23. WHIRL as a classification-learner

  24. Classification with unlabeled “Background” instances Example: instances are paper titles, background instances are paper abstracts

  25. Classifying short newswire headlines Very very short examples Very short examples

  26. “Best-first” search: pick state s that is “best” according to f(s) Suppose graph is a tree, and for all s, s’, if s’ is reachable from s then f(s)>=f(s’). Then A* outputs the globally best goal state s* first, and then next best, ... Inference in WHIRL

  27. Explode p(X1,X2,X3): find all DB tuples <p,a1,a2,a3> for p and bind Xi to ai. Constrain X~Y: if X is bound to a and Y is unbound, find DB column C to which Y should be bound pick a term t in X, find proper inverted index for t in C, and bind Y to something in that index Keep track of t’s used previously, and don’t allow Y to contain one. Inference in WHIRL

  28. Inference in WHIRL

  29. Summary • WHIRL finds the top k answers to a query • Queries tend to be easy because either they’re • unconstrained (e.g. 2-way similarity join) => easy to find 100 or so “good” answers • highly constrained (e.g. restricted sim join, multi-way join, classification query, ....) => easy to present all the “reasonable” answers to a user • Data integration usually considers matching two lists of entity descriptions in the abstract • unconstrained, sometimes under constrained (what is a match to the end user?) – i.e., we don’t know what the final query, and hence final constraints, will turn out to be. • this is evaluated a lot in experiments, but in an ideal world it would not the “wrong” problem

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