PARSING David Kauchak CS159 – Fall 2014. Admin Assignment 3 Quiz #1  High: 36  Average: 33 (92%)  Median: 33.5 (93%)

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PARSING David Kauchak CS159 – Fall 2014

Admin Assignment 3 Quiz #1  High: 36  Average: 33 (92%)  Median: 33.5 (93%)

Parsing Parsing is the field of NLP interested in automatically determining the syntactic structure of a sentence parsing can also be thought of as determining what sentences are “valid” English sentences

Parsing We have a grammar, determine the possible parse tree(s) Let’s start with parsing with a CFG (no probabilities) S  NP VP NP  PRP NP  N PP VP  V NP VP  V NP PP PP  IN N PRP  I V  eat N  sushi N  tuna IN  with I eat sushi with tuna approaches? algorithms?

Parsing Top-down parsing  ends up doing a lot of repeated work  doesn’t take into account the words in the sentence until the end! Bottom-up parsing  constrain based on the words  avoids repeated work (dynamic programming)  CKY parser

Parsing Top-down parsing  start at the top (usually S) and apply rules  matching left-hand sides and replacing with right-hand sides Bottom-up parsing  start at the bottom (i.e. words) and build the parse tree up from there  matching right-hand sides and replacing with left-hand sides

Parsing Example S VP Verb NP book Det Nominal that Noun flight book that flight

Top Down Parsing S NP VP Pronoun

Top Down Parsing S NP VP Pronoun book X

Top Down Parsing S NP VP ProperNoun

Top Down Parsing S NP VP ProperNoun book X

Top Down Parsing S NP VP Det Nominal

Top Down Parsing S NP VP Det Nominal book X

Top Down Parsing S Aux NP VP

Top Down Parsing S Aux NP VP book X

Top Down Parsing S VP

Top Down Parsing S VP Verb

Top Down Parsing S VP Verb book

Top Down Parsing S VP Verb book X that

Top Down Parsing S VP Verb NP

Top Down Parsing S VP Verb NP book

Top Down Parsing S VP Verb NP book Pronoun

Top Down Parsing S VP Verb NP book Pronoun X that

Top Down Parsing S VP Verb NP book ProperNoun

Top Down Parsing S VP Verb NP book ProperNoun X that

Top Down Parsing S VP Verb NP book Det Nominal

Top Down Parsing S VP Verb NP book Det Nominal that

Top Down Parsing S VP Verb NP book Det Nominal that Noun

Top Down Parsing S VP Verb NP book Det Nominal that Noun flight

Bottom Up Parsing book that flight

Bottom Up Parsing book that flight Noun

Bottom Up Parsing book that flight Noun Nominal

Bottom Up Parsing book that flight Noun Nominal Noun Nominal

Bottom Up Parsing book that flight Noun Nominal Noun Nominal X

Bottom Up Parsing book that flight Noun Nominal PP Nominal

Bottom Up Parsing book that flight Noun Det Nominal PP Nominal

Bottom Up Parsing book that flight Noun Det NP Nominal Nominal PP Nominal

Bottom Up Parsing book that Noun Det NP Nominal flight Noun Nominal PP Nominal

Bottom Up Parsing book that Noun Det NP Nominal flight Noun Nominal PP Nominal

Bottom Up Parsing book that Noun Det NP Nominal flight Noun S VP Nominal PP Nominal

Bottom Up Parsing book that Noun Det NP Nominal flight Noun S VP X Nominal PP Nominal

Bottom Up Parsing book that Noun Det NP Nominal flight Noun Nominal PP Nominal X

Bottom Up Parsing book that Verb Det NP Nominal flight Noun

Bottom Up Parsing book that Verb VP Det NP Nominal flight Noun

Det Bottom Up Parsing book that Verb VP S NP Nominal flight Noun

Det Bottom Up Parsing book that Verb VP S X NP Nominal flight Noun

Bottom Up Parsing book that Verb VP PP Det NP Nominal flight Noun

Bottom Up Parsing book that Verb VP PP Det NP Nominal flight Noun X

Bottom Up Parsing book that Verb VP Det NP Nominal flight Noun NP

Bottom Up Parsing book that Verb VP Det NP Nominal flight Noun

Bottom Up Parsing book that Verb VP Det NP Nominal flight Noun S

Parsing Pros/Cons?  Top-down: Only examines parses that could be valid parses (i.e. with an S on top) Doesn’t take into account the actual words!  Bottom-up: Only examines structures that have the actual words as the leaves Examines sub-parses that may NOT result in a valid parse!

Why is parsing hard? Actual grammars are large Lots of ambiguity!  Most sentences have many parses  Some sentences have a lot of parses  Even for sentences that are not ambiguous, there is often ambiguity for subtrees (i.e. multiple ways to parse a phrase)

Why is parsing hard? I saw the man on the hill with the telescope What are some interpretations?

Structural Ambiguity Can Give Exponential Parses Me See A man The telescope The hill “I was on the hill that has a telescope when I saw a man.” “I saw a man who was on the hill that has a telescope on it.” “I was on the hill when I used the telescope to see a man.” “I saw a man who was on a hill and who had a telescope.” “Using a telescope, I saw a man who was on a hill.”... I saw the man on the hill with the telescope

Dynamic Programming Parsing To avoid extensive repeated work you must cache intermediate results, specifically found constituents Caching (memoizing) is critical to obtaining a polynomial time parsing (recognition) algorithm for CFGs Dynamic programming algorithms based on both top- down and bottom-up search can achieve O(n 3 ) recognition time where n is the length of the input string.

Dynamic Programming Parsing Methods CKY (Cocke-Kasami-Younger) algorithm based on bottom-up parsing and requires first normalizing the grammar. Earley parser is based on top-down parsing and does not require normalizing grammar but is more complex. These both fall under the general category of chart parsers which retain completed constituents in a chart

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust what does this cell represent?

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust all constituents spanning 1-3 or “the man with”

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust how could we figure this out?

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust Key: rules are binary and only have two constituents on the right hand side VP -> VB NP NP -> DT NN

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust See if we can make a new constituent combining any for “the” with any for “man with”

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust See if we can make a new constituent combining any for “the man” with any for “with”

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust ? What combinations do we need to consider when trying to put constituents here?

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust See if we can make a new constituent combining any for “Film” with any for “the man with trust”

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust See if we can make a new constituent combining any for “Film the” with any for “man with trust”

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust See if we can make a new constituent combining any for “Film the man” with any for “with trust”

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust See if we can make a new constituent combining any for “Film the man with” with any for “trust”

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust What if our rules weren’t binary?

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust See if we can make a new constituent combining any for “Film” with any for “the man” with any for “with trust”

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust What order should we fill the entries in the chart?

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust From bottom to top, left to right

CKY parser: the chart i= j = Cell[i,j] contains all constituents covering words i through j Film the man with trust Top-left along the diagonals moving to the right

CKY parser: unary rules Often, we will leave unary rules rather than converting to CNF Do these complicate the algorithm? Must check whenever we add a constituent to see if any unary rules apply S -> VP VP -> VB NP VP -> VP2 PP VP2 -> VB NP NP -> DT NN NP -> NN NP -> NP PP PP -> IN NP DT -> the IN -> with VB -> film VB -> trust NN -> man NN -> film NN -> trust

CKY parser: the chart i= j = Film the man with trust S  VP VP  VB NP VP  VP2 PP VP2  VB NP NP  DT NN NP  NN NP  NP PP PP  IN NP DT  the IN  with VB  film VB  man VB  trust NN  man NN  film NN  trust

CKY parser: the chart i= j = Film the man with trust NN NP VB DT VB NN NP IN VB NN NP S  VP VP  VB NP VP  VP2 PP VP2  VB NP NP  DT NN NP  NN NP  NP PP PP  IN NP DT  the IN  with VB  film VB  man VB  trust NN  man NN  film NN  trust

CKY parser: the chart i= j = Film the man with trust DT VB NN NP IN VB NN NP PP NN NP VB S  VP VP  VB NP VP  VP2 PP VP2  VB NP NP  DT NN NP  NN NP  NP PP PP  IN NP DT  the IN  with VB  film VB  man VB  trust NN  man NN  film NN  trust

CKY parser: the chart i= j = Film the man with trust DT VB NN NP IN VB NN NP PP VP2 VP S NP NN NP VB S  VP VP  VB NP VP  VP2 PP VP2  VB NP NP  DT NN NP  NN NP  NP PP PP  IN NP DT  the IN  with VB  film VB  man VB  trust NN  man NN  film NN  trust

CKY parser: the chart i= j = Film the man with trust DT VB NN NP IN VB NN NP PP VP2 VP S NP NN NP VB S  VP VP  VB NP VP  VP2 PP VP2  VB NP NP  DT NN NP  NN NP  NP PP PP  IN NP DT  the IN  with VB  film VB  man VB  trust NN  man NN  film NN  trust

CKY parser: the chart i= j = Film the man with trust DT VB NN NP IN VB NN NP PP VP2 VP S NP S VP VP2 NN NP VB S  VP VP  VB NP VP  VP2 PP VP2  VB NP NP  DT NN NP  NN NP  NP PP PP  IN NP DT  the IN  with VB  film VB  man VB  trust NN  man NN  film NN  trust

CKY: some things to talk about After we fill in the chart, how do we know if there is a parse?  If there is an S in the upper right corner What if we want an actual tree/parse?

CKY: retrieving the parse i= j = DT VB NN NP IN VB NN NP PP VB2 VP S NP S VP S VBNP Film the man with trust NN NP VB

CKY: retrieving the parse i= j = DT VB NN NP IN VB NN NP PP VB2 VP S NP S VP S VBNP PP Film the man with trust NN NP VB

CKY: retrieving the parse i= j = DT VB NN NP IN VB NN NP PP VB2 VP S NP S VP S VBNP PP Film the man with trust DTNNINNP … NN NP VB

CKY: retrieving the parse i= j = DT VB NN NP IN VB NN NP PP VB2 VP S NP S VP Film the man with trust Where do these arrows/references come from? NN NP VB

CKY: retrieving the parse i= j = DT VB NN NP IN VB NN NP PP VB2 VP S NP S VP Film the man with trust To add a constituent in a cell, we’re applying a rule The references represent the smaller constituents we used to build this constituent S  VP NN NP VB

CKY: retrieving the parse i= j = DT VB NN NP IN VB NN NP PP VB2 VP S NP S VP Film the man with trust To add a constituent in a cell, we’re applying a rule The references represent the smaller constituents we used to build this constituent VP  VB NP NN NP VB

CKY: retrieving the parse i= j = DT VB NN NP IN VB NN NP PP VB2 VP S NP S VP Film the man with trust What about ambiguous parses? NN NP VB

CKY: retrieving the parse We can store multiple derivations of each constituent This representation is called a “parse forest” It is often convenient to leave it in this form, rather than enumerate all possible parses. Why?

CKY: some things to think about S  VP VP  VB NP VP  VB NP PP NP  DT NN NP  NN … S  VP VP  VB NP VP  VP2 PP VP2  VB NP NP  DT NN NP  NN … Actual grammarCNF We get a CNF parse tree but want one for the actual grammar Ideas?

Parsing ambiguity I eat sushi with tuna PRP NP VNINN PP NP VP S I eat sushi with tuna PRP NP VNINN PP NP VP S S  NP VP NP  PRP NP  N PP VP  V NP VP  V NP PP PP  IN N PRP  I V  eat N  sushi N  tuna IN  with How can we decide between these?

A Simple PCFG S  NP VP 1.0 VP  V NP 0.7 VP  VP PP 0.3 PP  P NP 1.0 P  with 1.0 V  saw 1.0 NP  NP PP 0.4 NP  astronomers 0.1 NP  ears 0.18 NP  saw 0.04 NP  stars 0.18 NP  telescope 0.1 Probabilities!

= 1.0 * 0.1 * 0.7 * 1.0 * 0.4 * 0.18 * 1.0 * 1.0 * 0.18 = = 1.0 * 0.1 * 0.3 * 0.7 * 1.0 * 0.18 * 1.0 * 1.0 * 0.18 =

Parsing with PCFGs How does this change our CKY algorithm?  We need to keep track of the probability of a constituent How do we calculate the probability of a constituent?  Product of the PCFG rule times the product of the probabilities of the sub-constituents (right hand sides)  Building up the product from the bottom-up What if there are multiple ways of deriving a particular constituent?  max: pick the most likely derivation of that constituent

Probabilistic CKY Include in each cell a probability for each non-terminal Cell[i,j] must retain the most probable derivation of each constituent (non-terminal) covering words i through j When transforming the grammar to CNF, must set production probabilities to preserve the probability of derivations

Probabilistic Grammar Conversion S → NP VP S → Aux NP VP S → VP NP → Pronoun NP → Proper-Noun NP → Det Nominal Nominal → Noun Nominal → Nominal Noun Nominal → Nominal PP VP → Verb VP → Verb NP VP → VP PP PP → Prep NP Original GrammarChomsky Normal Form S → NP VP S → X1 VP X1 → Aux NP S → book | include | prefer S → Verb NP S → VP PP NP → I | he | she | me NP → Houston | NWA NP → Det Nominal Nominal → book | flight | meal | money Nominal → Nominal Noun Nominal → Nominal PP VP → book | include | prefer VP → Verb NP VP → VP PP PP → Prep NP

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP → Det Nominal0.60 What is the probability of the NP?

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 NP → Det Nominal0.60

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 VP → Verb NP0.5 What is the probability of the VP?

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 VP:.5*.5*.054 =.0135 VP → Verb NP0.5

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 VP:.5*.5*.054 =.0135 S:.05*.5*.054 =.00135

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 VP:.5*.5*.054 =.0135 S:.05*.5*.054 = None Prep:.2

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 VP:.5*.5*.054 =.0135 S:.05*.5*.054 = None Prep:.2 NP:.16 PropNoun:.8 PP:1.0*.2*.16 =.032

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 VP:.5*.5*.054 =.0135 S:.05*.5*.054 = None Prep:.2 NP:.16 PropNoun:.8 PP:1.0*.2*.16 =.032 Nominal:.5*.15*.032 =.0024

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 VP:.5*.5*.054 =.0135 S:.05*.5*.054 = None Prep:.2 NP:.16 PropNoun:.8 PP:1.0*.2*.16 =.032 Nominal:.5*.15*.032 =.0024 NP:.6*.6*.0024 =

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 VP:.5*.5*.054 =.0135 S:.05*.5*.054 = None Prep:.2 NP:.16 PropNoun:.8 PP:1.0*.2*.16 =.032 Nominal:.5*.15*.032 =.0024 NP:.6*.6*.0024 = S:.05*.5* = S:.03*.0135*.032 = S → VP PP0.03 S → Verb NP0.05 Which parse do we pick?

Probabilistic CKY Parser Book the flight through Houston S :.01, VP:.1, Verb:.5 Nominal:.03 Noun:.1 Det:.6 Nominal:.15 Noun:.5 None NP:.6*.6*.15 =.054 VP:.5*.5*.054 =.0135 S:.05*.5*.054 = None Prep:.2 NP:.16 PropNoun:.8 PP:1.0*.2*.16 =.032 Nominal:.5*.15*.032 =.0024 NP:.6*.6*.0024 = S: Pick most probable parse, i.e. take max to combine probabilities of multiple derivations of each constituent in each cell

Generic PCFG Limitations PCFGs do not rely on specific words or concepts, only general structural disambiguation is possible (e.g. prefer to attach PPs to Nominals)  Generic PCFGs cannot resolve syntactic ambiguities that require semantics to resolve, e.g. ate with fork vs. meatballs Smoothing/dealing with out of vocabulary MLE estimates are not always the best