C-Pack: Packed Resources For General Chinese Embeddings
This provides a complete toolkit for researchers and practitioners working with Chinese text embeddings, though it appears incremental as it adapts existing embedding approaches to the Chinese domain.
The authors tackled the lack of comprehensive resources for Chinese text embeddings by introducing C-Pack, which includes a benchmark, dataset, and models that outperform prior Chinese embeddings by up to 10% on their benchmark.
We introduce C-Pack, a package of resources that significantly advance the field of general Chinese embeddings. C-Pack includes three critical resources. 1) C-MTEB is a comprehensive benchmark for Chinese text embeddings covering 6 tasks and 35 datasets. 2) C-MTP is a massive text embedding dataset curated from labeled and unlabeled Chinese corpora for training embedding models. 3) C-TEM is a family of embedding models covering multiple sizes. Our models outperform all prior Chinese text embeddings on C-MTEB by up to +10% upon the time of the release. We also integrate and optimize the entire suite of training methods for C-TEM. Along with our resources on general Chinese embedding, we release our data and models for English text embeddings. The English models achieve state-of-the-art performance on MTEB benchmark; meanwhile, our released English data is 2 times larger than the Chinese data. All these resources are made publicly available at https://github.com/FlagOpen/FlagEmbedding.