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Learning Distributed Representations of Sentences from Unlabelled Data

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Unsupervised methods for learning distributed representations of words are ubiquitous in today's NLP research, but far less is known about the best ways to learn distributed phrase or sentence representations from unlabelled data. This paper is a systematic comparison of models that learn such representations. We find that the optimal approach depends critically on the intended application. Deeper, more complex models are preferable for representations to be used in supervised systems, but shallow log-linear models work best for building representation spaces that can be decoded with simple spatial distance metrics. We also propose two new unsupervised representation-learning objectives designed to optimise the trade-off between training time, domain portability and performance.

Felix Hill, Kyunghyun Cho, Anna Korhonen• 2016

Related benchmarks

TaskDatasetResultRank
Subjectivity ClassificationSubj
Accuracy90.8
266
Question ClassificationTREC--
205
Text ClassificationTREC
Accuracy80.4
179
Opinion Polarity DetectionMPQA
Accuracy86.9
154
Sentiment ClassificationMR
Accuracy74.6
148
Sentiment ClassificationCR
Accuracy78.4
142
Text ClassificationMR (test)
Accuracy74.6
99
Text ClassificationMR
Accuracy74.6
93
Sentence Embedding EvaluationSentEval--
44
Paraphrase DetectionMSRP
Accuracy76.4
34
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