nlg-eval
Model evaluator
A toolset for evaluating and comparing natural language generation models
Evaluation code for various unsupervised automated metrics for Natural Language Generation.
1k stars
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224 forks
Language: Python
last commit: 6 months ago
Linked from 1 awesome list
bleubleu-scoreciderdialogdialogueevaluationmachine-translationmeteornatural-language-generationnatural-language-processingnlgnlprougerouge-lskip-thought-vectorsskip-thoughtstask-oriented-dialogue
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