Continuing Pre-training on Low-Resource African Corpora for Zero-Shot XNLI Transfer Accuracy
Description
This paper studies zero-shot cross-lingual transfer of vision-language models. Specifically, we focus on multilingual text-to-video search and propose a Transformer-based model that learns contextualized multilingual multimodal embeddings. Under a zero-shot setting, we empirically demonstrate that performance degrades significantly when we query the multilingual text-video model with non-English sentences. To address this problem, we introduce a multilingual multimodal pre-training strategy, and collect a new multilingual instructional video dataset (MultiHowTo100M) for pre-training. Experimen
Research goal: How does continuing pre-training on low-resource African language corpora affect zero-shot cross-lingual transfer accuracy on the XNLI benchmark compared to standard multilingual baselines?
Autonomous synthesis report generated by Assignee Research. Tribunal consensus score: 9.3/10.
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