CSSR: A Context-Aware Sequential Software Service Recommendation Model
Zhang, Mingwei, Liu, Jiayuan, Zhang, Weipu, Deng, Ke, Dong, Hai, Liu, Ying
–arXiv.org Artificial Intelligence
We propose a novel software service recommendation model to help users find their suitable repositories in GitHub. Our model first designs a novel context-induced repository graph embedding method to leverage rich contextual information of repositories to alleviate the difficulties caused by the data sparsity issue. It then leverages sequence information of user-repository interactions for the first time in the software service recommendation field. Specifically, a deep-learning based sequential recommendation technique is adopted to capture the dynamics of user preferences. Comprehensive experiments have been conducted on a large dataset collected from GitHub against a list of existing methods. The results illustrate the superiority of our method in various aspects.
arXiv.org Artificial Intelligence
Dec-19-2021