Poster
Once Read is Enough: Finetuning-free Language Models with Cluster-guided Sparse Experts for Long-tail Domain Knowledge
Fang Dong · Mengyi Chen · Jixian Zhou · Yubin Shi · Yixuan Chen · Mingzhi Dong · Yujiang Wang · Dongsheng Li · Xiaochen Yang · Rui Zhu · Robert Dick · Qin Lv · Fan Yang · Tun Lu · Ning Gu · Li Shang
Language models (LMs) only pretrained on a general and massive corpus usually cannot attain satisfying performance on domain-specific downstream tasks, and hence, finetuning pretrained LMs is a common and indispensable practice.However, domain finetuning can be costly and time-consuming, hindering LMs' deployment in real-world applications.In this work, we consider the incapability to memorize domain-specific knowledge embedded in the general corpus with rare occurrences and \say{long-tail} distributions as the leading cause for pretrained LMs' inferior downstream performance. Analysis of Neural Tangent Kernels (NTKs) reveals that those long-tail data are commonly overlooked in the model's gradient updates and, consequently, are not effectively memorized, leading to poor domain-specific downstream performance.Based on the intuition that data with similar semantic meaning are closer in the embedding space, we devise a Cluster-guided Sparse Expert (CSE) layer to actively learn long-tail domain knowledge typically neglected in previous pretrained LMs.During pretraining, a CSE layer efficiently cluster domain knowledge together and assign long-tail knowledge to designate extra experts. CSE is also a light-weight structure that only needs to be incorporated in several deep layers.With our training strategy, we found that during pretraining, data of long-tail knowledge gradually formulate isolated, \say{outlier} clusters in an LM's representation spaces, especially in deeper layers. Our experimental results show that only pretraining CSE-based LMs is enough to achieve superior performance than regularly pretrained-finetuned LMs on various downstream tasks, implying the prospects of finetuning-free language models.
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