Predicting Preference Flips in Commerce Search
This work addresses a fundamental limitation in search ranking for e-commerce, offering a novel approach to improve user experience by accounting for behavioral economics insights.
The paper tackled the problem of ranking in web search by addressing how user preferences between items can change based on the presence of other alternatives, proposing a Random Shopper Model that outperforms scoring-based methods in commerce search logs.
Traditional approaches to ranking in web search follow the paradigm of rank-by-score: a learned function gives each query-URL combination an absolute score and URLs are ranked according to this score. This paradigm ensures that if the score of one URL is better than another then one will always be ranked higher than the other. Scoring contradicts prior work in behavioral economics that showed that users' preferences between two items depend not only on the items but also on the presented alternatives. Thus, for the same query, users' preference between items A and B depends on the presence/absence of item C. We propose a new model of ranking, the Random Shopper Model, that allows and explains such behavior. In this model, each feature is viewed as a Markov chain over the items to be ranked, and the goal is to find a weighting of the features that best reflects their importance. We show that our model can be learned under the empirical risk minimization framework, and give an efficient learning algorithm. Experiments on commerce search logs demonstrate that our algorithm outperforms scoring-based approaches including regression and listwise ranking.