Compositional Evaluation on Japanese Textual Entailment and Similarity (2208.04826v1)
Abstract: Natural Language Inference (NLI) and Semantic Textual Similarity (STS) are widely used benchmark tasks for compositional evaluation of pre-trained LLMs. Despite growing interest in linguistic universals, most NLI/STS studies have focused almost exclusively on English. In particular, there are no available multilingual NLI/STS datasets in Japanese, which is typologically different from English and can shed light on the currently controversial behavior of LLMs in matters such as sensitivity to word order and case particles. Against this background, we introduce JSICK, a Japanese NLI/STS dataset that was manually translated from the English dataset SICK. We also present a stress-test dataset for compositional inference, created by transforming syntactic structures of sentences in JSICK to investigate whether LLMs are sensitive to word order and case particles. We conduct baseline experiments on different pre-trained LLMs and compare the performance of multilingual models when applied to Japanese and other languages. The results of the stress-test experiments suggest that the current pre-trained LLMs are insensitive to word order and case marking.
- Hitomi Yanaka (30 papers)
- Koji Mineshima (20 papers)