Authors
Rishabh Mehrotra,
Emine Yilmaz,
Publication date
2015
Publisher
Total citations
Description
Current search systems do not provide adequate support for users tackling complex tasks due to which the cognitive burden of keeping track of such tasks is placed on the searcher. As opposed to recent approaches to search task extraction, a more naturalistic viewpoint would involve viewing query logs as hierarchies of tasks with each search task being decomposed into more focussed sub-tasks. In this work, we propose an efficient Bayesian nonparametric model for extracting hierarchies of such tasks & subtasks. The proposed approach makes use of the multi-relational aspect of query associations which are important in identifying query-task associations. We describe a greedy agglomerative model selection algorithm based on the Gamma-Poisson conjugate mixture that take just one pass through the data to learn a fully probabilistic, hierarchical model of trees that is capable of learning trees with arbitrary …