Query reformulation in E-commerce search
"Query reformulation in E-commerce search "
The importance of e-commerce platforms has driven forward a growing body of research work on e-commerce search. We present the first large-scale and in-depth study of query reformulations performed by users of e-commerce search; the study is based on the query logs of eBay’s search engine. We analyze various factors including the distribution of different types of reformulations, changes of search result pages retrieved for the reformulations, and clicks and purchases performed upon the retrieved results. We then turn to address a novel challenge in the e-commerce search realm: predicting whether a user will reformulate her query before presenting her the search results. Using a suite of prediction features, most of which are novel to this study, we attain high prediction quality. Some of the features operate prior to retrieval time, whereas others rely on the retrieved results. While the latter are substantially more effective than the former, we show that the integration of these two types of features is of merit. We also show that high prediction quality can be obtained without considering information from the past about the user or the query she posted. Nevertheless, using these types of information can further improve prediction quality.
Bio: Ido Guy is a senior research scientist manager at Meta (formerly Facebook), supporting an EMEA-based team focusing on applied science for Commerce and Ads. Before joining Meta, Ido was a Director of Applied Research and Chief Scientist at eBay Israel, where he has been building and heading teams in Israel, the US, and Europe who applied machine learning and natural language processing to the world's largest e-commerce inventory. Before eBay, he was a research lead and manager at IBM and Yahoo. Ido is an adjunct Associate Professor at the Ben-Gurion University of the Negev and a co-author of over 70 scientific papers, specializing in Information Retrieval and Recommender Systems. His co-authored papers won the best paper honorable mention award at ICDM 2006, VAST 2011, CSCW 2014, and SIGIR 2016 (as a single author), and the best paper award at ICDT 2022.