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=== Discourse (semantics beyond individual sentences) === ; [[Coreference|Coreference resolution]]: Given a sentence or larger chunk of text, determine which words ("mentions") refer to the same objects ("entities"). [[Anaphora resolution]] is a specific example of this task, and is specifically concerned with matching up [[pronoun]]s with the nouns or names to which they refer. The more general task of coreference resolution also includes identifying so-called "bridging relationships" involving [[referring expression]]s. For example, in a sentence such as "He entered John's house through the front door", "the front door" is a referring expression and the bridging relationship to be identified is the fact that the door being referred to is the front door of John's house (rather than of some other structure that might also be referred to). ; [[Discourse analysis]]: This rubric includes several related tasks. One task is discourse parsing, i.e., identifying the [[discourse]] structure of a connected text, i.e. the nature of the discourse relationships between sentences (e.g. elaboration, explanation, contrast). Another possible task is recognizing and classifying the [[speech act]]s in a chunk of text (e.g. yesβno question, content question, statement, assertion, etc.). ; {{visible anchor|Implicit semantic role labelling}} :Given a single sentence, identify and disambiguate semantic predicates (e.g., verbal [[Frame semantics (linguistics)|frames]]) and their explicit semantic roles in the current sentence (see [[#Semantic role labelling|Semantic role labelling]] above). Then, identify semantic roles that are not explicitly realized in the current sentence, classify them into arguments that are explicitly realized elsewhere in the text and those that are not specified, and resolve the former against the local text. A closely related task is zero anaphora resolution, i.e., the extension of coreference resolution to [[pro-drop language]]s. ; [[Textual entailment|Recognizing textual entailment]]: Given two text fragments, determine if one being true entails the other, entails the other's negation, or allows the other to be either true or false.<ref name="rte:11">PASCAL Recognizing Textual Entailment Challenge (RTE-7) https://tac.nist.gov//2011/RTE/</ref> ; [[Topic segmentation]] and recognition :Given a chunk of text, separate it into segments each of which is devoted to a topic, and identify the topic of the segment. ; [[Argument mining]] :The goal of argument mining is the automatic extraction and identification of argumentative structures from [[natural language]] text with the aid of computer programs.<ref>{{Cite journal|last1=Lippi|first1=Marco|last2=Torroni|first2=Paolo|date=2016-04-20|title=Argumentation Mining: State of the Art and Emerging Trends|url=https://dl.acm.org/doi/10.1145/2850417|journal=ACM Transactions on Internet Technology|language=en|volume=16|issue=2|pages=1β25|doi=10.1145/2850417|hdl=11585/523460|s2cid=9561587|issn=1533-5399|hdl-access=free}}</ref> Such argumentative structures include the premise, conclusions, the [[argument scheme]] and the relationship between the main and subsidiary argument, or the main and counter-argument within discourse.<ref>{{Cite web|title=Argument Mining β IJCAI2016 Tutorial|url=https://www.i3s.unice.fr/~villata/tutorialIJCAI2016.html|access-date=2021-03-09|website=www.i3s.unice.fr}}</ref><ref>{{Cite web|title=NLP Approaches to Computational Argumentation β ACL 2016, Berlin|url=http://acl2016tutorial.arg.tech/|access-date=2021-03-09|language=en-GB}}</ref>
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