Presents a low-supervision urgency detection system using ensembles and transfer learning that outperforms baselines on multiple disaster datasets.
Problems With Evaluation of Word Embeddings Using Word Similarity Tasks
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abstract
Lacking standardized extrinsic evaluation methods for vector representations of words, the NLP community has relied heavily on word similarity tasks as a proxy for intrinsic evaluation of word vectors. Word similarity evaluation, which correlates the distance between vectors and human judgments of semantic similarity is attractive, because it is computationally inexpensive and fast. In this paper we present several problems associated with the evaluation of word vectors on word similarity datasets, and summarize existing solutions. Our study suggests that the use of word similarity tasks for evaluation of word vectors is not sustainable and calls for further research on evaluation methods.
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cs.CL 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Low-supervision urgency detection and transfer in short crisis messages
Presents a low-supervision urgency detection system using ensembles and transfer learning that outperforms baselines on multiple disaster datasets.