Analyzing and Detecting Information Types of Developer Live Chat Threads

Author:

Shang Xiuwei1ORCID,Zhang Shuai2ORCID,Zhang Yitong2ORCID,Guo Shikai3ORCID,Li Yulong4ORCID,Chen Rong2ORCID,Li Hui2ORCID,Li Xiaochen5ORCID,Jiang He5ORCID

Affiliation:

1. Dalian Maritime University, University of Science and Technology of China, Dalian, China

2. Dalian Maritime University, Dalian, China

3. Dalian Maritime University, The Dalian Key Laboratory of Artificial Intelligence, Dalian, China

4. Tianjin University, Tianjin, China

5. Dalian University of Technology, Dalian, China

Abstract

Online chatrooms serve as vital platforms for information exchange among software developers. With multiple developers engaged in rapid communication and diverse conversation topics, the resulting chat messages often manifest complexity and lack structure. To enhance the efficiency of extracting information from chat threads , automatic mining techniques are introduced for thread classification. However, previous approaches still grapple with unsatisfactory classification accuracy due to two primary challenges that they struggle to adequately capture long-distance dependencies within chat threads and address the issue of category imbalance in labeled datasets. To surmount these challenges, we present a topic classification approach for chat information types named EAEChat. Specifically, EAEChat comprises three core components: the text feature encoding component captures contextual text features using a multi-head self-attention mechanism-based text feature encoder, and a siamese network is employed to mitigate overfitting caused by limited data; the data augmentation component expands a small number of categories in the training dataset using a technique tailored to developer chat messages, effectively tackling the challenge of imbalanced category distribution; the non-text feature encoding component employs a feature fusion model to integrate deep text features with manually extracted non-text features. Evaluation across three real-world projects demonstrates that EAEChat, respectively, achieves an average precision, recall, and F1-score of 0.653, 0.651, and 0.644, and it marks a significant 7.60% improvement over the state-of-the-art approaches. These findings confirm the effectiveness of our method in proficiently classifying developer chat messages in online chatrooms.

Funder

Dalian Excellent Young Project

National Natural Science Foundation of China

Natural Science Foundation of Liaoning Province

Publisher

Association for Computing Machinery (ACM)

Reference64 articles.

1. Why Developers Are Slacking Off: Understanding How Software Teams Use Slack

2. The (R) Evolution of social media in software engineering

3. Communication in open-source projects-end of the e-mail era?

4. GitLab. 2014. Gitter. Retrieved from https://gitter.im/

5. Slack Technologies. 2013. Slack. Retrieved from https://slack.com/

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