Publication | Open Access
A Fixed-Size Encoding Method for Variable-Length Sequences with its Application to Neural Network Language Models
13
Citations
13
References
2015
Year
Fixed-size RepresentationEngineeringMachine LearningSequential LearningRecurrent FeedbacksVariable-length SequencesFixed-size Encoding MethodPopular Rnn-lmsMultilingual PretrainingLarge Language ModelRecurrent Neural NetworkSpeech RecognitionNatural Language ProcessingComputational LinguisticsLanguage StudiesLanguage ModelsMachine TranslationVariable-length CodeSequence ModellingComputer ScienceNeural Machine TranslationLinguistics
In this paper, we propose the new fixed-size ordinally-forgetting encoding (FOFE) method, which can almost uniquely encode any variable-length sequence of words into a fixed-size representation. FOFE can model the word order in a sequence using a simple ordinally-forgetting mechanism according to the positions of words. In this work, we have applied FOFE to feedforward neural network language models (FNN-LMs). Experimental results have shown that without using any recurrent feedbacks, FOFE based FNN-LMs can significantly outperform not only the standard fixed-input FNN-LMs but also the popular RNN-LMs.
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