Parsing discourse is a challenging natural language processing task. In this research work first we take a data driven approach to identify arguments of explicit discourse connectives. In contrast to previous work we do not make any assumptions on the span of arguments and consider parsing as a token-level sequence labeling task. We design the argument segmentation task as a cascade of decisions based on conditional random fields (CRFs). We train the CRFs on lexical, syntactic and semantic features extracted from the Penn Discourse Treebank and evaluate feature combinations on the commonly used test split. We show that the best combination of features includes syntactic and semantic features. The comparative error analysis investigate...
Discourse parsing is the task of identifying the relatedness and the particular discourse relations ...
Discourse parsing is the task of identifying the relatedness and the particular discourse relations ...
Previous attempts at RST-style discourse segmentation typically adopt features cen-tered on a single...
Discourse parsing recently attracts increasing interest among researchers since it is very helpful f...
Discourse parsing recently attracts increasing interest among researchers since it is very helpful f...
RST-style discourse parsing plays a vital role in many NLP tasks, revealing the underlying semantic/...
A discourse constitutes a locally and globally coherent text in which words, clauses and sentences a...
A discourse constitutes a locally and globally coherent text in which words, clauses and sentences a...
The need to model the relation between discourse structure and linguistic features of ut-terances is...
We propose a novel approach for develop-ing a two-stage document-level discourse parser. Our parser ...
In this thesis, we propose novel approaches for supervised RST-style discourse parsing, as well as t...
In this thesis, we propose novel approaches for supervised RST-style discourse parsing, as well as t...
Predicting discourse structure on naturally occurring texts and dialogs is challenging and computati...
Discourse information, as postulated by popular discourse theories, such as RST and PDTB, has been s...
International audiencePredicting discourse structure on naturally occurring texts and dialogs is cha...
Discourse parsing is the task of identifying the relatedness and the particular discourse relations ...
Discourse parsing is the task of identifying the relatedness and the particular discourse relations ...
Previous attempts at RST-style discourse segmentation typically adopt features cen-tered on a single...
Discourse parsing recently attracts increasing interest among researchers since it is very helpful f...
Discourse parsing recently attracts increasing interest among researchers since it is very helpful f...
RST-style discourse parsing plays a vital role in many NLP tasks, revealing the underlying semantic/...
A discourse constitutes a locally and globally coherent text in which words, clauses and sentences a...
A discourse constitutes a locally and globally coherent text in which words, clauses and sentences a...
The need to model the relation between discourse structure and linguistic features of ut-terances is...
We propose a novel approach for develop-ing a two-stage document-level discourse parser. Our parser ...
In this thesis, we propose novel approaches for supervised RST-style discourse parsing, as well as t...
In this thesis, we propose novel approaches for supervised RST-style discourse parsing, as well as t...
Predicting discourse structure on naturally occurring texts and dialogs is challenging and computati...
Discourse information, as postulated by popular discourse theories, such as RST and PDTB, has been s...
International audiencePredicting discourse structure on naturally occurring texts and dialogs is cha...
Discourse parsing is the task of identifying the relatedness and the particular discourse relations ...
Discourse parsing is the task of identifying the relatedness and the particular discourse relations ...
Previous attempts at RST-style discourse segmentation typically adopt features cen-tered on a single...