Learning Non-Verbal Relations Under Open Information Extraction Paradigm

About The Book

Doctoral Thesis / Dissertation from the year 2014 in the subject Computer Science - Miscellaneous course: Graduate Program in Computer Science language: English abstract: The Open Information Extraction (Open IE) is a relation extraction paradigm in which the target relationships cannot be specified in advance and it aims to overcome the limitations imposed by traditional IE methods such as domain-dependence and scalability.In order to extend Open IE to extract relationships that are not expressed by verbs from texts in English we introduce CompIE a component that learns relations expressed in noun compounds (NCs) such as (oil extracted from olive) from olive oil or in adjective-noun pairs (ANs) such as (moon that is gorgeous) from gorgeous moon. CompIE input is a text file and the output is a set of triples describing binary relationships. The architecture comprises two main tasks: NCs and ANs Extraction (1) and NCs and ANs Interpretation (2). The first task generates a list of NCs and ANs from the input corpus. The second task performs the interpretation of NCs and ANs and generates the tuples that describe the relations extracted from the corpus. In order to study CompIE's feasibility we perform an evaluation based on hypotheses. In order to implement the strategies to validate each hypothesis we have built a prototype. The results show that our solution achieves 89% Precision and demonstrate that CompIE reaches its goal of extending Open IE paradigm extracting relationships within NCs and ANs.
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