ACL2023

UniTRec: A Unified Text-to-Text Transformer and Joint Contrastive Learning Framework for Text-based Recommendation

Zhiming Mao, Huimin Wang, Yiming Du, Kam-Fai Wong

16 citations

Abstract

Prior study has shown that pretrained language models (PLM) can boost the performance of text-based recommendation. In contrast to previous works that either use PLM to encode user history as a whole input text, or impose an additional aggregation network to fuse multiturn history representations, we propose a unified local-and global-attention Transformer encoder to better model two-level contexts of user history. Moreover, conditioned on user history encoded by Transformer encoders, our framework leverages Transformer decoders to estimate the language perplexity of candidate text items, which can serve as a straightforward yet significant contrastive signal for user-item text matching. Based on this, our framework, UniTRec, unifies the contrastive objectives of discriminative matching scores and candidate text perplexity to jointly enhance text-based recommendation. Extensive evaluation shows that UniTRec delivers SOTA performance on three text-based recommendation tasks. 1 LSU, Ohio State, and Clemson control path to College Football Playoff. Kevin Hart makes first official appearance at People's Choice Awards. Yardbarker's NFL Week 10 game-bygame analysis and grades.