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Annotating Causality in the
TempEval-3 Corpus
Paramita Mirza Rachele Sprugnoli Sara Tonelli Manuela Speranza
paramita@fbk.eu sprugnoli@fbk.eu satonelli@fbk.eu manspera@fbk.eu
CAtoCL Workshop, EACL
April, 2014
• TimeML annotation → a markup language for events
and temporal expressions
• Include causal information in the TempEval-3 corpus
CAUSE
IS_INCLUDED
EVENT TIMEX
BEFORE
EVENT
TLINKTLINK
SIGNAL
Hewlett-Packard acquired 730,070 common shares from Octel as
a result of a stock purchase agreement signed on Aug. 10, 1988.
Hewlett-Packard acquired 730,070 common shares from Octel as
a result of a stock purchase agreement signed on Aug. 10, 1988.
TempEval-3 Corpus
What will be covered…
• Annotation guidelines for causality
• Automatic annotation of explicit causality
between events
• Qualitative and quantitative evaluation
What will be covered…
• Annotation guidelines for causality
• Automatic annotation of explicit causality
between events
• Qualitative and quantitative evaluation
C-SIGNAL and CLINK
TimeML annotation
- EVENT
- TIMEX3
- SIGNAL
- TLINK
+ Causality
- C-SIGNAL
- CLINK
• C-SIGNAL → textual elements indicating the presence of causal relations
• Prepositions
• Conjunctions
• Adverbial connectors
• Clause-integrated expressions
because of, as a result of, due to, …
because, since, so that, …
as a result, so, therefore, …
the result is, that’s why, …
• CLINK → a directional one-to-one relation where
source = causing event and target = caused event
(optional) c-signalID = ID of related C-SIGNAL
Causal Concepts
Dynamics Model based on Force Dynamics Theory (Talmy, 1988)
• Captures the concept of causality, along with its related
concepts, in terms of three dimensions:
– the patient tendency for the result
– the presence of concordance between the affector and the
patient
– the occurrence of the result
• Able to distinguish the concept of CAUSE from ENABLE, which
is not available in the counterfactual model
• Was tested by linking it with natural language
• The causality concepts can be lexicalized as verbs (Wolff and
Song, 2003):
– CAUSE-type cause, influence, persuade, prompt, …
– ENABLE-type aid, allow, enable, let, …
– PREVENT-type block, constrain, prevent, restrain, …
CLINK: explicit causal constructions
linking two events (source to target)
• Basic construction
– The purchaseS caused the creationT of the current building
– The purchaseS enabled the diversificationT of their business
– The purchaseS prevented a future transferT
• Expressions with affect verbs affect, influence, determine, change
– Ogun CAN crisisS affects the launchT of the All Progressives Congress
• Expressions with link verbs link, lead, depend (on)
– An earthquakeT in North America was linked to a tsunamiS in Japan
• Periphrastic causatives
– The blastS prompts the boat to heelT violently
– The oxygenS lets the fire getsT bigger
– The poleS restrains the tent from collapsingT
• Expressions with C-SIGNALs
– Iraq said it invadedT Kuwait because of disputesS over oil and money
Polarity of CLINK
• Polarity of events can help determining
polarity of CLINKs
– Serotonin deficiencyS does not cause depressionT
What will be covered…
• Annotation guidelines for causality
• Automatic annotation of explicit causality
between events
• Qualitative and quantitative evaluation
Rule-based Annotation
• Dataset:
– TBAQ-cleaned corpus from TempEval-3, with gold annotated events
• Algorithm:
– The dataset is PoS-tagged and parsed with Stanford dependency
parser
– The dataset is further analyzed with addDiscourse tool
– Look for specific dependency constructions where a causal verb/signal
is connected to two events
– If such dependency is found:
• establish CLINK
• identify source and target events
– If a causal connector is an event, uses the polarity of the event to
assign polarity of the CLINK
• Limitations:
– Only look for CLINKs between events within the same sentence
– Only consider a finite set of causal verbs/signals
Statistics of Automatic Annotation
• Remarks
– ENABLE-type verbs never
appear in basic construction
– 36 affect verb occurrences
– 50 link verb occurrences
– From around 1K causative verb occurrences, only 14% are
in periphrastic constructions
– From around 1.2K potential causal connectors, only 194
are recognized as causal signals (after disambiguation)
– Only 2 CLINKs found with negative polarity
Explicit causality CLINKs
Basic construction 17
Affect verbs 0
Link verbs 4
Periphrastic causatives 41
Causal signals 111
Total 173
Statistics of Automatic Annotation (3)
• CLINKs vs TLINKs
– 173 CLINKs vs 5.2K TLINKs
– 33% of CLINKs have underlying TLINKs, most are signaled by C-
SIGNALs
• Iraq said it invadedT Kuwait because of disputesS over oil and
money → BEFORE
– For CLINK with causative verbs, BEFORE is the only type (with
one exception of SIMULTANEOUS)
– For CLINK with causal signals, BEFORE type is also the majority,
with some exceptions:
• But some analysts questionedT how much of an impact the
retirement will have, because few jobs will endS up being
eliminated → AFTER
• The 486 is the descendant of a long series of Intel chips that
beganT dominating the market ever since IBM pickedS the 16-
bit 8088 chip for its first personal computer → BEGINS
What will be covered…
• Annotation guidelines for causality
• Automatic annotation of explicit causality
between events
• Qualitative and quantitative evaluation
Qualitative Evaluation
• Two main types of errors:
– Wrong identification of involved events, due to
dependency parser mistakes
• StatesWest Airlines said it withdrew its offer to acquireS
Mesa Airlines because the Farmington carrier did not
respondT to its offer.
– Annotation of sentences not containing causal relations,
due to ambiguous nature of verbs, prepositions and
conjunctions
• Since then, 427 fugitives have been taken into custody
or located.
Qualitative Evaluation (2)
Connector types Extracted Correct Precision
Basic CAUSE
PREVENT
ENABLE
5
12
0
3
3
-
0.60
0.25
-
Affect verbs 0 - -
Link verbs 4 3 0.75
Periphrastic CAUSE
PREVENT
ENABLE
11
6
24
8
1
17
0.73
0.17
0.71
C-SIGNALs 111 70 0.63
Total 173 105 0.61
Quantitative Evaluation
• Manual annotation:
– Dataset: 100 documents from TimeBank corpus
– Inter-annotator agreement (on 5 documents):
• 0.844 Dice’s coefficient on C-SIGNAL
• 0.73 Dice’s coefficient on CLINK
Automatic precision recall F1-score
C-SIGNAL 0.64 0.49 0.55
CLINK 0.42 0.23 0.30
Annotation EVENT C-SIGNAL CLINK
Manual 3933 78 144
Manual-w/o new events 3872 78 95
Automatic 3872 59 52
Conclusions
• Annotation guidelines for causality between events…
presented
• Rule-based algorithm for automatic annotation:
– Manual evaluation: 0.61 precision
– Compared with manual annotation: 0.55 F1-score for
CSIGNAL and 0.3 F1-score for CLINK
– Mistakes are introduced by tools used for parsing and
disambiguating causal signals
– Not all events involved in causal relations are
annotated
• Recognizing CLINKs based on causal signals is more
straightforward
Conclusions (2)
• Polarity of CLINK can be easily identified, though negative
polarity is not so frequent
• There are only few overlaps between CLINKs and TLINKs,
with BEFORE as the majority underlying temporal
relation type
• Future work…
– Factuality and certainty annotation of events
– Complete the manual annotation of TempEval-3 corpus,
and make it available
– Another approach for automatic causal relation extraction
– Integration of the proposed guidelines1 with GAF (Fokkens
et al., 2013)
1 available at http://www.newsreader-project.eu/publications/technical-reports/
(NWR-2014-2)
Thank you!
CAUSE
BEFORE
Paramita closes the presentation so the
question-answering session may start.

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Annotating Causality in the TempEval-3 Corpus

  • 1. Annotating Causality in the TempEval-3 Corpus Paramita Mirza Rachele Sprugnoli Sara Tonelli Manuela Speranza paramita@fbk.eu sprugnoli@fbk.eu satonelli@fbk.eu manspera@fbk.eu CAtoCL Workshop, EACL April, 2014
  • 2. • TimeML annotation → a markup language for events and temporal expressions • Include causal information in the TempEval-3 corpus CAUSE IS_INCLUDED EVENT TIMEX BEFORE EVENT TLINKTLINK SIGNAL Hewlett-Packard acquired 730,070 common shares from Octel as a result of a stock purchase agreement signed on Aug. 10, 1988. Hewlett-Packard acquired 730,070 common shares from Octel as a result of a stock purchase agreement signed on Aug. 10, 1988. TempEval-3 Corpus
  • 3. What will be covered… • Annotation guidelines for causality • Automatic annotation of explicit causality between events • Qualitative and quantitative evaluation
  • 4. What will be covered… • Annotation guidelines for causality • Automatic annotation of explicit causality between events • Qualitative and quantitative evaluation
  • 5. C-SIGNAL and CLINK TimeML annotation - EVENT - TIMEX3 - SIGNAL - TLINK + Causality - C-SIGNAL - CLINK • C-SIGNAL → textual elements indicating the presence of causal relations • Prepositions • Conjunctions • Adverbial connectors • Clause-integrated expressions because of, as a result of, due to, … because, since, so that, … as a result, so, therefore, … the result is, that’s why, … • CLINK → a directional one-to-one relation where source = causing event and target = caused event (optional) c-signalID = ID of related C-SIGNAL
  • 6. Causal Concepts Dynamics Model based on Force Dynamics Theory (Talmy, 1988) • Captures the concept of causality, along with its related concepts, in terms of three dimensions: – the patient tendency for the result – the presence of concordance between the affector and the patient – the occurrence of the result • Able to distinguish the concept of CAUSE from ENABLE, which is not available in the counterfactual model • Was tested by linking it with natural language • The causality concepts can be lexicalized as verbs (Wolff and Song, 2003): – CAUSE-type cause, influence, persuade, prompt, … – ENABLE-type aid, allow, enable, let, … – PREVENT-type block, constrain, prevent, restrain, …
  • 7. CLINK: explicit causal constructions linking two events (source to target) • Basic construction – The purchaseS caused the creationT of the current building – The purchaseS enabled the diversificationT of their business – The purchaseS prevented a future transferT • Expressions with affect verbs affect, influence, determine, change – Ogun CAN crisisS affects the launchT of the All Progressives Congress • Expressions with link verbs link, lead, depend (on) – An earthquakeT in North America was linked to a tsunamiS in Japan • Periphrastic causatives – The blastS prompts the boat to heelT violently – The oxygenS lets the fire getsT bigger – The poleS restrains the tent from collapsingT • Expressions with C-SIGNALs – Iraq said it invadedT Kuwait because of disputesS over oil and money
  • 8. Polarity of CLINK • Polarity of events can help determining polarity of CLINKs – Serotonin deficiencyS does not cause depressionT
  • 9. What will be covered… • Annotation guidelines for causality • Automatic annotation of explicit causality between events • Qualitative and quantitative evaluation
  • 10. Rule-based Annotation • Dataset: – TBAQ-cleaned corpus from TempEval-3, with gold annotated events • Algorithm: – The dataset is PoS-tagged and parsed with Stanford dependency parser – The dataset is further analyzed with addDiscourse tool – Look for specific dependency constructions where a causal verb/signal is connected to two events – If such dependency is found: • establish CLINK • identify source and target events – If a causal connector is an event, uses the polarity of the event to assign polarity of the CLINK • Limitations: – Only look for CLINKs between events within the same sentence – Only consider a finite set of causal verbs/signals
  • 11. Statistics of Automatic Annotation • Remarks – ENABLE-type verbs never appear in basic construction – 36 affect verb occurrences – 50 link verb occurrences – From around 1K causative verb occurrences, only 14% are in periphrastic constructions – From around 1.2K potential causal connectors, only 194 are recognized as causal signals (after disambiguation) – Only 2 CLINKs found with negative polarity Explicit causality CLINKs Basic construction 17 Affect verbs 0 Link verbs 4 Periphrastic causatives 41 Causal signals 111 Total 173
  • 12. Statistics of Automatic Annotation (3) • CLINKs vs TLINKs – 173 CLINKs vs 5.2K TLINKs – 33% of CLINKs have underlying TLINKs, most are signaled by C- SIGNALs • Iraq said it invadedT Kuwait because of disputesS over oil and money → BEFORE – For CLINK with causative verbs, BEFORE is the only type (with one exception of SIMULTANEOUS) – For CLINK with causal signals, BEFORE type is also the majority, with some exceptions: • But some analysts questionedT how much of an impact the retirement will have, because few jobs will endS up being eliminated → AFTER • The 486 is the descendant of a long series of Intel chips that beganT dominating the market ever since IBM pickedS the 16- bit 8088 chip for its first personal computer → BEGINS
  • 13. What will be covered… • Annotation guidelines for causality • Automatic annotation of explicit causality between events • Qualitative and quantitative evaluation
  • 14. Qualitative Evaluation • Two main types of errors: – Wrong identification of involved events, due to dependency parser mistakes • StatesWest Airlines said it withdrew its offer to acquireS Mesa Airlines because the Farmington carrier did not respondT to its offer. – Annotation of sentences not containing causal relations, due to ambiguous nature of verbs, prepositions and conjunctions • Since then, 427 fugitives have been taken into custody or located.
  • 15. Qualitative Evaluation (2) Connector types Extracted Correct Precision Basic CAUSE PREVENT ENABLE 5 12 0 3 3 - 0.60 0.25 - Affect verbs 0 - - Link verbs 4 3 0.75 Periphrastic CAUSE PREVENT ENABLE 11 6 24 8 1 17 0.73 0.17 0.71 C-SIGNALs 111 70 0.63 Total 173 105 0.61
  • 16. Quantitative Evaluation • Manual annotation: – Dataset: 100 documents from TimeBank corpus – Inter-annotator agreement (on 5 documents): • 0.844 Dice’s coefficient on C-SIGNAL • 0.73 Dice’s coefficient on CLINK Automatic precision recall F1-score C-SIGNAL 0.64 0.49 0.55 CLINK 0.42 0.23 0.30 Annotation EVENT C-SIGNAL CLINK Manual 3933 78 144 Manual-w/o new events 3872 78 95 Automatic 3872 59 52
  • 17. Conclusions • Annotation guidelines for causality between events… presented • Rule-based algorithm for automatic annotation: – Manual evaluation: 0.61 precision – Compared with manual annotation: 0.55 F1-score for CSIGNAL and 0.3 F1-score for CLINK – Mistakes are introduced by tools used for parsing and disambiguating causal signals – Not all events involved in causal relations are annotated • Recognizing CLINKs based on causal signals is more straightforward
  • 18. Conclusions (2) • Polarity of CLINK can be easily identified, though negative polarity is not so frequent • There are only few overlaps between CLINKs and TLINKs, with BEFORE as the majority underlying temporal relation type • Future work… – Factuality and certainty annotation of events – Complete the manual annotation of TempEval-3 corpus, and make it available – Another approach for automatic causal relation extraction – Integration of the proposed guidelines1 with GAF (Fokkens et al., 2013) 1 available at http://www.newsreader-project.eu/publications/technical-reports/ (NWR-2014-2)
  • 19. Thank you! CAUSE BEFORE Paramita closes the presentation so the question-answering session may start.