Abstract
AbstractTraditional query auto-completion (QAC) relies heavily on search logs collected over many users. However, in on-device email search, the scarcity of logs and the governing privacy constraints make QAC a challenging task. In this work, we propose an on-device QAC method that runs directly on users’ devices, where users’ sensitive data and interaction logs are not collected, shared, or aggregated through web services. This method retrieves candidates using pseudo relevance feedback, and ranks them based on relevance signals that explore the textual and structural information from users’ emails. We also propose a private corpora based evaluation method, and empirically demonstrate the effectiveness of our proposed method.
Publisher
Springer Nature Switzerland
Reference30 articles.
1. Abdul-Jaleel, N., et al.: UMass at TREC 2004: novelty and hard. Computer Science Department Faculty Publication Series, p. 189 (2004)
2. Aberdeen, D., Pacovsky, O., Slater, A.: The learning behind gmail priority inbox (2010)
3. Ai, Q., Dumais, S.T., Craswell, N., Liebling, D.: Characterizing email search using large-scale behavioral logs and surveys. In: Proceedings of the 26th International Conference on World Wide Web, pp. 1511–1520 (2017)
4. Alrashed, T., Lee, C.J., Bailey, P., Lin, C., Shokouhi, M., Dumais, S.: Evaluating user actions as a proxy for email significance. In: The World Wide Web Conference, pp. 26–36 (2019)
5. Lecture Notes in Computer Science;R Baeza-Yates,2004