AICLDec 1, 2016

On Coreferring Text-extracted Event Descriptions with the aid of Ontological Reasoning

arXiv:1612.00227v13 citations
Originality Incremental advance
AI Analysis

This work addresses event coreference resolution for natural language processing applications, representing an incremental improvement by integrating semantic rules.

The paper tackles the problem of event coreference resolution by incorporating ontological reasoning into the process, demonstrating improved performance on a standard benchmark dataset.

Systems for automatic extraction of semantic information about events from large textual resources are now available: these tools are capable to generate RDF datasets about text extracted events and this knowledge can be used to reason over the recognized events. On the other hand, text based tasks for event recognition, as for example event coreference (i.e. recognizing whether two textual descriptions refer to the same event), do not take into account ontological information of the extracted events in their process. In this paper, we propose a method to derive event coreference on text extracted event data using semantic based rule reasoning. We demonstrate our method considering a limited (yet representative) set of event types: we introduce a formal analysis on their ontological properties and, on the base of this, we define a set of coreference criteria. We then implement these criteria as RDF-based reasoning rules to be applied on text extracted event data. We evaluate the effectiveness of our approach over a standard coreference benchmark dataset.

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