Evaluation of Distributional Models with the Outlier Detection Task

TítuloEvaluation of Distributional Models with the Outlier Detection Task
AutoresPablo Gamallo
TipoComunicación para congreso
Fonte 7th Symposium on Languages, Applications and Technologies, Gimarães, Portugal, 2018.
DOI10.4230/OASIcs.SLATE.2018.13
AbstractIn this article, we define the outlier detection task and use it to compare neural-based word embed- dings with transparent count-based distributional representations. Using the English Wikipedia as text source to train the models, we observed that embeddings outperform count-based rep- resentations when their contexts are made up of bag-of-words. However, there are no sharp differences between the two models if the word contexts are defined as syntactic dependencies. In general, syntax-based models tend to perform better than those based on bag-of-words for this specific task. Similar experiments were carried out for Portuguese with similar results. The test datasets we have created for outlier detection task in English and Portuguese are released.
Palabras chavedistributional semantics, dependency analysis, outlier detection, similarity