UBham: Lexical Resources and Dependency Parsing for Aspect-Based Sentiment Analysis
نویسندگان
چکیده
This paper describes the system developed by the UBham team for the SemEval2014 Aspect-Based Sentiment Analysis task (Task 4). We present an approach based on deep linguistic processing techniques and resources, and explore the parameter space of these techniques applied to the different stages in this task and examine possibilities to exploit interdependencies between them.
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