We introduce a new proxy score for evaluating bitext mining based on similarity in a multilingual embedding space: xSIM++. In comparison to xSIM, this improved proxy leverages rule-based approaches to extend English sentences in any evaluation set with synthetic, hard-to-distinguish examples which more closely mirror the scenarios we encounter during large-scale mining. We validate this proxy by running a significant number of bitext mining experiments for a set of low-resource languages, and subsequently train NMT systems on the mined data. In comparison to xSIM, we show that xSIM++ is better correlated with the downstream BLEU scores of translation systems trained on mined bitexts, providing a reliable proxy of bitext mining performance without needing to run expensive bitext mining pipelines. xSIM++ also reports performance for different error types, offering more fine-grained feedback for model development.
xSIM++: An Improved Proxy to Bitext Mining Performance for Low-Resource Languages
xSIM++ is an improved proxy score for evaluating bitext mining through multilingual embeddings and synthetic sentence extensions, better correlating with downstream BLEU scores and offering detailed error type performance metrics.
- Year
- 2023
- Venue
- arXiv 2023
- Authors
- 5
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2306.12907ARXIV-DEFAULT
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