Ruri:日语通用文本嵌入

Hayato Tsukagoshi, Ryohei Sasano
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引用次数: 0

摘要

我们报告了一系列日语通用文本嵌入模型 Ruri 的开发情况。近年来,英语和多语言环境下的通用文本嵌入模型的开发十分活跃,但日语模型的开发仍然不足。其主要原因是缺乏数据集和必要的专业知识。在本报告中,我们详细介绍了 Ruri 的开发过程。具体来说,我们讨论了使用 LLM 生成的合成数据集训练嵌入模型、构建用于数据集过滤和知识提炼的 reranker,以及对所生成的通用文本嵌入模型进行性能评估。
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Ruri: Japanese General Text Embeddings
We report the development of Ruri, a series of Japanese general text embedding models. While the development of general-purpose text embedding models in English and multilingual contexts has been active in recent years, model development in Japanese remains insufficient. The primary reasons for this are the lack of datasets and the absence of necessary expertise. In this report, we provide a detailed account of the development process of Ruri. Specifically, we discuss the training of embedding models using synthesized datasets generated by LLMs, the construction of the reranker for dataset filtering and knowledge distillation, and the performance evaluation of the resulting general-purpose text embedding models.
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