Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
515466 | Information Processing & Management | 2015 | 18 Pages |
•We analyse the named entity recognition and disambiguation performance on tweets.•Multiple state-of-the-art systems are included.•Commercial and academic systems suffer the same range of problems.•Lack of context is a major problem, demanding new, custom NER & NEL approaches.•A named entity linking corpus is released with the paper.
Applying natural language processing for mining and intelligent information access to tweets (a form of microblog) is a challenging, emerging research area. Unlike carefully authored news text and other longer content, tweets pose a number of new challenges, due to their short, noisy, context-dependent, and dynamic nature. Information extraction from tweets is typically performed in a pipeline, comprising consecutive stages of language identification, tokenisation, part-of-speech tagging, named entity recognition and entity disambiguation (e.g. with respect to DBpedia). In this work, we describe a new Twitter entity disambiguation dataset, and conduct an empirical analysis of named entity recognition and disambiguation, investigating how robust a number of state-of-the-art systems are on such noisy texts, what the main sources of error are, and which problems should be further investigated to improve the state of the art.