DiffScore is a bidirectional masked-diffusion evaluation framework that measures text recoverability across masking rates and outperforms autoregressive baselines on ten benchmarks.
Results of the WMT19 metrics shared task: Segment-level and strong MT systems pose big challenges
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DiffScore: Text Evaluation Beyond Autoregressive Likelihood
DiffScore is a bidirectional masked-diffusion evaluation framework that measures text recoverability across masking rates and outperforms autoregressive baselines on ten benchmarks.