On the State of the Art of Evaluation in Neural Language Models

Gábor Melis, Chris Dyer, Phil Blunsom

2017-07-18ICLR 2018 1Language Modelling

Abstract

Ongoing innovations in recurrent neural network architectures have provided a steady influx of apparently state-of-the-art results on language modelling benchmarks. However, these have been evaluated using differing code bases and limited computational resources, which represent uncontrolled sources of experimental variation. We reevaluate several popular architectures and regularisation methods with large-scale automatic black-box hyperparameter tuning and arrive at the somewhat surprising conclusion that standard LSTM architectures, when properly regularised, outperform more recent models. We establish a new state of the art on the Penn Treebank and Wikitext-2 corpora, as well as strong baselines on the Hutter Prize dataset.

Results

TaskDatasetMetricValueModel
Language ModellingWikiText-2Test perplexity65.9Melis et al. (2017) - 1-layer LSTM (tied)
Language ModellingWikiText-2Validation perplexity69.3Melis et al. (2017) - 1-layer LSTM (tied)

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