Calibration of Confidence Scores in Zero-Shot Cross-Lingual Transfer via Multilingual Intermediate Tasks
Description
Multilingual BERT (mBERT), a language model pre-trained on large multilingual corpora, has impressive zero-shot cross-lingual transfer capabilities and performs surprisingly well on zero-shot POS tagging and Named Entity Recognition (NER), as well as on cross-lingual model transfer. At present, the mainstream methods to solve the cross-lingual downstream tasks are always using the last transformer layer's output of mBERT as the representation of linguistic information. In this work, we explore the complementary property of lower layers to the last transformer layer of mBERT. A feature aggregat
Research goal: How does the calibration of confidence scores for zero-shot cross-lingual transfer tasks in XTREME change when using multilingual intermediate tasks instead of English-only intermediate tasks?
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