Authors
Tetsuya Sakai, Zhicheng Dou
Publication date
2013/7/28
Book
Proceedings of the 36th international ACM SIGIR conference on Research and development in information retrieval
Pages
473-482
Description
We introduce a general information access evaluation framework that can potentially handle summaries, ranked document lists and even multi query sessions seamlessly. Our framework first builds a trailtext which represents a concatenation of all the texts read by the user during a search session, and then computes an evaluation metric called U-measure over the trailtext. Instead of discounting the value of a retrieved piece of information based on ranks, U-measure discounts it based on its position within the trailtext. U-measure takes the document length into account just like Time-Biased Gain (TBG), and has the diminishing return property. It is therefore more realistic than rank-based metrics. Furthermore, it is arguably more flexible than TBG, as it is free from the linear traversal assumption (i.e., that the user scans the ranked list from top to bottom), and can handle information access tasks other than ad hoc …
Total citations
201320142015201620172018201920202021202220232024512611145996785
Scholar articles