Publication | Open Access
Language Modeling by Clustering with Word Embeddings for Text Readability Assessment
37
Citations
21
References
2017
Year
Unknown Venue
EngineeringClustering-based Language ModelSemanticsCorpus LinguisticsText MiningWord EmbeddingsNatural Language ProcessingInformation RetrievalData ScienceComputational LinguisticsLanguage StudiesMachine TranslationDocument ClusteringNlp TaskKnowledge DiscoveryText Readability AssessmentDistributional SemanticsText Readability PredictionLexical Complexity PredictionText ProcessingLinguisticsSemantic Similarity
We present a clustering-based language model using word embeddings for text readability prediction. Presumably, an Euclidean semantic space hypothesis holds true for word embeddings whose training is done by observing word co-occurrences. We argue that clustering with word embeddings in the metric space should yield feature representations in a higher semantic space appropriate for text regression. Also, by representing features in terms of histograms, our approach can naturally address documents of varying lengths. An empirical evaluation using the Common Core Standards corpus reveals that the features formed on our clustering-based language model significantly improve the previously known results for the same corpus in readability prediction. We also evaluate the task of sentence matching based on semantic relatedness using the Wiki-SimpleWiki corpus and find that our features lead to superior matching performance.
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