Litcius/Paper detail

Sparse Text Generation

Pedro Henrique Martins, Zita Marinho, André F. T. Martins

202021 citationsDOIOpen Access PDF

Abstract

Current state-of-the-art text generators build on powerful language models such as GPT-2, achieving impressive performance. However, to avoid degenerate text, they require sampling from a modified softmax, via temperature parameters or ad-hoc truncation techniques, as in top-k or nucleus sampling. This creates a mismatch between training and testing conditions. In this paper, we use the recently introduced entmax transformation to train and sample from a natively sparse language model, avoiding this mismatch. The result is a text generator with favorable performance in terms of fluency and consistency, fewer repetitions, and n-gram diversity closer to human text. In order to evaluate our model, we propose three new metrics for comparing sparse or truncated distributions: -perplexity, sparsemax score, and Jensen-Shannon divergence. Human-evaluated experiments in story completion and dialogue generation show that entmax sampling leads to more engaging and coherent stories and conversations.

Topics & Concepts

PerplexityComputer scienceGenerator (circuit theory)Language modelSoftmax functionDivergence (linguistics)FluencySampling (signal processing)Artificial intelligenceConsistency (knowledge bases)Natural language processingArtificial neural networkMathematicsLinguisticsFilter (signal processing)Power (physics)Computer visionQuantum mechanicsPhilosophyMathematics educationPhysicsTopic ModelingNatural Language Processing TechniquesMultimodal Machine Learning Applications