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Parsing More Efficiently and Accurately

This review discusses the efficient parsing techniques such as top-down and bottom-up parsers, left-corner table, solutions for left recursion and structural ambiguity. It also covers issues for better parsing like efficiency, error handling, control strategies, agreement and subcategorization.

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Parsing More Efficiently and Accurately

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  1. Parsing More Efficiently and Accurately CS 4705

  2. Review • Top-Down vs. Bottom-Up Parsers • Left-corner table provides more efficient look-ahead • Left recursion solutions • Structural ambiguity…solutions?

  3. Issues for Better Parsing • Efficiency • Error handling • Control strategies • Agreement and subcategorization

  4. Inefficient Re-Parsing of Subtrees

  5. Dynamic Programming • Create table of solutions to sub-problems (e.g. subtrees) as parse proceeds • Look up subtrees for each constituent rather than re-parsing • Since all parses implicitly stored, all available for later disambiguation • Examples: Cocke-Younger-Kasami (CYK) (1960), Graham-Harrison-Ruzzo (GHR) (1980) and Earley (1970) algorithms

  6. Earley’s Algorithm • Uses dynamic programming to do parallel top-down search in (worst case) O(N3) time • First, L2R pass fills out a chart with N+1 states (N: the number of words in the input) • Think of chart entries as sitting between words in the input string keeping track of states of the parse at these positions • For each word position, chart contains set of states representing all partial parse trees generated to date. E.g. chart[0] contains all partial parse trees generated at the beginning of the sentence

  7. Chart entries represent three type of constituents: • predicted constituents (top-down predictions) • in-progress constituents (we’re in the midst of …) • completed constituents (we’ve found …) • Progress in parse represented by Dotted Rules • Position of • indicates type of constituent • 0 Book 1 that 2 flight 3 S --> • VP, [0,0] (predicting VP) NP --> Det • Nom, [1,2] (finding NP) VP --> V NP •, [0,3] (found VP) • [x,y] tells us where the state begins (x) and where the dot lies (y) wrt the input

  8. 0 Book 1 that 2 flight 3 S --> • VP, [0,0] • First 0 means S constituent begins at the start of the input • Second 0 means the dot here too • So, this is a top-down prediction NP --> Det • Nom, [1,2] • the NP begins at position 1 • the dot is at position 2 • so, Det has been successfully parsed • Nom predicted next

  9. VP --> V NP •, [0,3] • Successful VP parse of entire input • Graphical representation

  10. Successful Parse • Final answer is found by looking at last entry in chart • If entry resembles S -->  • [0,N] then input parsed successfully • But … note that chart will also contain a record of all possible parses of input string, given the grammar -- not just the successful one(s) • Why is this useful?

  11. Parsing Procedure for the Earley Algorithm • Move through each set of states in order, applying one of three operators to each state: • predictor: add top-down predictions to the chart • scanner: read input and add corresponding state to chart • completer: move dot to right when new constituent found • Results (new states) added to current or next set of states in chart • No backtracking and no states removed: keep complete history of parse • Why is this useful?

  12. Predictor • Intuition: new states represent top-down expectations • Applied when non part-of-speech non-terminals are to the right of a dot S --> • VP [0,0] • Adds new states to end of current chart • One new state for each expansion of the non-terminal in the grammar VP --> • V [0,0] VP --> • V NP [0,0]

  13. Scanner • New states for predicted part of speech. • Applicable when part of speech is to the right of a dot VP --> • V NP [0,0] ‘Book…’ • Looks at current word in input • If match, adds state(s) to next chart VP --> V • NP [0,1] • I.e., we’ve found a piece of this constituent!

  14. Completer • Intuition: we’ve found a constituent, so tell everyone waiting for this • Applied when dot has reached right end of rule NP --> Det Nom • [1,3] • Find all states w/dot at 1 and expecting an NP VP --> V • NP [0,1] • Adds new (completed) state(s) to current chart VP --> V NP • [0,3]

  15. Book that flight (Chart [0]) • Seed chart with top-down predictions for S from grammar

  16. S  NP VP S  Aux NP VP S  VP NP  Det Nom Prep from | to | on PropN  Houston | TWA CFG for Fragment of English Det  that | this | a N  book | flight | meal | money V  book | include | prefer Aux  does Nom  N Nom  N Nom NP PropN VP  V Nom  Nom PP VP  V NP PP  Prep NP

  17. When dummy start state is processed, it’s passed to Predictor, which produces states representing every possible expansion of S, and adds these and every expansion of the left corners of these trees to bottom of Chart[0] • When VP --> • V, [0,0] is reached, Scanner called, which consults first word of input, Book, and adds first state to Chart[1],VP --> Book •, [0,0] • Note: When VP --> • V NP, [0,0] is reached in Chart[0], Scanner does not need to add VP --> Book •, [0,0] again to Chart[1]

  18. Chart[1] V--> book passed to Completer, which finds 2 states in Chart[0] whose left corner is V and adds them to Chart[1], moving dots to right

  19. When VP  V  is itself processed by the Completer, S  VP  is added to Chart[1] since VP is a left corner of S • Last 2 rules in Chart[1] are added by Predictor when VP  V  NP is processed • And so on….

  20. How do we retrieve the parses at the end? • Augment the Completer to add ptr to prior states it advances as a field in the current state • I.e. what state did we advance here? • Read the ptrs back from the final state

  21. Error Handling • What happens when we look at the contents of the last table column and don't find a S -->  rule? • Is it a total loss? No... • Chart contains every constituent and combination of constituents possible for the input given the grammar • Also useful for partial parsing or shallow parsing used in information extraction

  22. Alternative Control Strategies • Change Earley top-down strategy to bottom-up or ... • Change to best-first strategy based on the probabilities of constituents • Compute and store probabilities of constituents in the chart as you parse • Then instead of expanding states in fixed order, allow probabilities to control order of expansion

  23. But there are still problems… • Several things CFGs don’t handle elegantly: • Agreement (A cat sleeps. Cats sleep.) S  NP VP NP  Det Nom But these rules overgenerate, allowing, e.g., *A cat sleep… • Subcategorization (Cats dream. Cats eat cantaloupe.)

  24. VP  V VP  V NP But these also allow *Cats dream cantaloupe. • We need to constrain the grammar rules to enforce e.g. number agreement and subcategorization differences

  25. CFG Solution • Encode constraints into the non-terminals • Noun/verb agreement S SgS S  PlS SgS  SgNP SgVP SgNP  SgDet SgNom • Verb subcat: IntransVP  IntransV TransVP  TransV NP

  26. But this means huge proliferation of rules… • An alternative: • View terminals and non-terminals as complex objects with associated features, which take on different values • Write grammar rules whose application is constrained by tests on these features, e.g. S  NP VP (only if the NP and VP agree in number)

  27. Feature Structures • Sets of feature-value pairs where: • Features are atomic symbols • Values are atomic symbols or feature structures • Illustrated by attribute-value matrix

  28. Number feature • Number-person features • Number-person-category features (3sgNP)

  29. Features, Unification and Grammars • How do we incorporate feature structures into our grammars? • Assume that constituents are objects which have feature-structures associated with them • Associate sets of unification constraints with grammar rules • Constraints must be satisfied for rule to be satisfied • To enforce subject/verb number agreement S  NP VP <NP NUM> = <VP NUM>

  30. Agreement in English • We need to add PERS to our subj/verb agreement constraint This cat likes kibble. S  NP Vp <NP AGR> = <VP AGR> Do these cats like kibble? S  Aux NP VP <Aux AGR> = <NP AGR>

  31. Det/Nom agreement can be handled similarly These cats This cat NP  Det Nom <Det AGR> = <Nom AGR> <NP AGR> = <Nom AGR> • And so on …

  32. Verb Subcategorization • Recall: Different verbs take different types of argument • Solution: SUBCAT feature, or subcategorization frames e.g. Bill wants George to eat.

  33. But there are many phrasal types and so many types of subcategorization frames, e.g. • believe • believe [VPrep in] [NP ghosts] • believe [NP my mother] • believe [Sfin that I will pass this test] • believe [Swh what I see] ... • Verbs also subcategorize for subject as well as object types ([Swh What she wanted] seemed clear.) • And other p.o.s. can be seen as subcategorizing for various arguments, such as prepositions, nouns and adjectives (It was clear [Sfin that she was exhausted])

  34. Summing Up • Ambiguity, left-recursion, and repeated re-parsing of subtrees present major problems for parsers • Solutions: • Combine top-down predictions with bottom-up look-ahead, use dynamic programming  e.g. the Earley algorithm • Feature structures and subcategorization frames help constrain parses but increase parsing complexity • Next time: Read Ch 12

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