PEPT: Expert Finding Meets Personalized Pre-training

Author:

Peng Qiyao1ORCID,Xu Hongyan1ORCID,Wang Yinghui2ORCID,Liu Hongtao3ORCID,Huo Cuiying1ORCID,Wang Wenjun4ORCID

Affiliation:

1. Tianjin University, China

2. Beijing Institute of Control and Electronic Technology, China

3. Du Xiaoman Technology, China

4. Tianjin University, China and Hainan Tropical Ocean University, China

Abstract

Finding experts is essential in Community Question Answering (CQA) platforms as it enables the effective routing of questions to potential users who can provide relevant answers. The key is to personalized learning expert representations based on their historical answered questions, and accurately matching them with target questions. Recently, the application of Pre-trained Language Models (PLMs) have gained significant attraction due to their impressive capability to comprehend textual data, and are widespread used across various domains. There have been some preliminary works exploring the usability of PLMs in expert finding, such as pre-training expert or question representations. However, these models usually learn pure text representations of experts from histories, disregarding personalized and fine-grained expert modeling. For alleviating this, we present a personalized pre-training and fine-tuning paradigm, which could effectively learn expert interest and expertise simultaneously. Specifically, in our pre-training framework, we integrate historical answered questions of one expert with one target question, and regard it as a candidate aware expert-level input unit. Then, we fuse expert IDs into the pre-training for guiding the model to model personalized expert representations, which can help capture the unique characteristics and expertise of each individual expert. Additionally, in our pre-training task, we design: 1) a question-level masked language model task to learn the relatedness between histories, enabling the modeling of question-level expert interest; 2) a vote-oriented task to capture question-level expert expertise by predicting the vote score the expert would receive. Through our pre-training framework and tasks, our approach could holistically learn expert representations including interests and expertise. Our method has been extensively evaluated on six real-world CQA datasets, and the experimental results consistently demonstrate the superiority of our approach over competitive baseline methods. 1

Publisher

Association for Computing Machinery (ACM)

Reference65 articles.

1. Maddalena Amendola, Carlos Castillo, Andrea Passarella, and Raffaele Perego. 2024. Understanding and Addressing Gender Bias in Expert Finding Task. arXiv preprint arXiv:2407.05335 (2024).

2. Maddalena Amendola, Andrea Passarella, and Raffaele Perego. 2024. Leveraging Topic Specificity and Social Relationships for Expert Finding in Community Question Answering Platforms. arXiv preprint arXiv:2407.04018 (2024).

3. Maddalena Amendola, Andrea Passarella, and Raffaele Perego. 2024. Towards Robust Expert Finding in Community Question Answering Platforms. In European Conference on Information Retrieval. Springer, Glasgow, Scotland, 152–168.

4. Jinze Bai Shuai Bai Yunfei Chu Zeyu Cui Kai Dang Xiaodong Deng Yang Fan Wenbin Ge Yu Han Fei Huang et al. 2023. Qwen technical report. arXiv preprint arXiv:2309.16609 (2023).

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