Abstract

Natural language models can accomplish non-natural language tasks such as protein prediction, but the actual prediction effect is low and occupies large computational resources. In this paper, a fusion embedding model is proposed to improve the prediction effect of the model and reduce the computational cost of the model by fusing information of different dimensions. The paper is validated by the downstream task of protein function prediction, which provides a reference for solving practical tasks using fusion embedding methods.

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