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Prompt Learning for News Recommendation

Zizhuo Zhang, Bang Wang

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Abstract

Some recent news recommendation (NR) methods introduce a Pre-trained Language Model (PLM) to encode news representation by following the vanilla pre-train and fine-tune paradigm with carefully-designed recommendation-specific neural networks and objective functions. Due to the inconsistent task objective with that of PLM, we argue that their modeling paradigm has not well exploited the abundant semantic information and linguistic knowledge embedded in the pre-training process. Recently, the pre-train, prompt, and predict paradigm, called prompt learning, has achieved many successes in natural language processing domain. In this paper, we make the first trial of this new paradigm to develop a Prompt Learning for News Recommendation (Prompt4NR) framework, which transforms the task of predicting whether a user would click a candidate news as a cloze-style mask-prediction task. Specifically, we design a series of prompt templates, including discrete, continuous, and hybrid templates, and construct their corresponding answer spaces to examine the proposed Prompt4NR framework. Furthermore, we use the prompt ensembling to integrate predictions from multiple prompt templates. Extensive experiments on the MIND dataset validate the effectiveness of our Prompt4NR with a set of new benchmark results.

Topics & Concepts

Computer scienceBenchmark (surveying)Task (project management)Set (abstract data type)Representation (politics)Artificial intelligenceConstruct (python library)ENCODEProcess (computing)Natural language processingNatural languageDomain (mathematical analysis)Feature learningRecommender systemMachine learningProgramming languageGeographyMathematical analysisPoliticsMathematicsEconomicsGeneChemistryLawManagementPolitical scienceGeodesyBiochemistryTopic ModelingRecommender Systems and TechniquesMultimodal Machine Learning Applications