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Evaluating the Evaluation of Diversity in Natural Language Generation

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Despite growing interest in natural language generation (NLG) models that produce diverse outputs, there is currently no principled method for evaluating the diversity of an NLG system. In this work, we propose a framework for evaluating diversity metrics. The framework measures the correlation between a proposed diversity metric and a diversity parameter, a single parameter that controls some aspect of diversity in generated text. For example, a diversity parameter might be a binary variable used to instruct crowdsourcing workers to generate text with either low or high content diversity. We demonstrate the utility of our framework by: (a) establishing best practices for eliciting diversity judgments from humans, (b) showing that humans substantially outperform automatic metrics in estimating content diversity, and (c) demonstrating that existing methods for controlling diversity by tuning a "decoding parameter" mostly affect form but not meaning. Our framework can advance the understanding of different diversity metrics, an essential step on the road towards better NLG systems.

Guy Tevet, Jonathan Berant• 2020

Related benchmarks

TaskDatasetResultRank
ClassificationBBC
Accuracy74
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prompt_genConTest 200 with_hds
Spearman Rho0.646
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Simile Creativity EvaluationSimile candidates
Pearson R0.319
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Simile Recommendation RankingSimile Recommendation Dataset
HR@157.1
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Classificationpatents
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ClassificationarXiv
Accuracy89
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Response GenerationDecTest resp_gen no_hds (1000 samples)
Spearman ρ0.895
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Prompt GenerationDecTest prompt_gen 1000 samples no_hds
Spearman Rho0.878
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Story GenerationDecTest story_gen no_hds (1000 samples)
Spearman ρ0.712
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