Accelerating E-Commerce Search Engine Ranking by Contextual Factor Selection
نویسندگان
چکیده
In industrial large-scale search systems, such as Taobao.com search for commodities, the quality of the ranking result is getting continually improved by introducing more factors from complex procedures, e.g., deep neural networks for extracting image factors. Meanwhile, the increasing of the factors demands more computation resource and raises the system response latency. It has been observed that a search instance usually requires only a small set of effective factors, instead of all factors. Therefore, removing ineffective factors significantly improves the system efficiency. This paper studies the Contextual Factor Selection (CFS), which selects only a subset of effective factors for every search instance, for a well balance between the search quality and the response latency. We inject CFS into the search engine ranking score to accelerate the engine, considering both ranking effectiveness and efficiency. The learning of the CFS model involves a combinatorial optimization, which is transformed as a sequential decision-making problem. Solving the problem by reinforcement learning, we propose the RankCFS, which has been assessed in an off-line environment as well as a real-world on-line environment (Taobao.com). The empirical results show that, the proposed CFS approach outperforms several existing supervised/unsupervised methods for feature selection in the off-line environment, and also achieves significant real-world performance improvement, in term of service latency, in daily test as well as Singles’ Day Shopping Festival in 2017.
منابع مشابه
Brand Positioning Strategy Using Search Engine Marketing
Whether and how firms can employ relative rankings in search engine results pages (SERPs) to differentiate their brands from competitors in cyberspace remains a critical, puzzling issue in e-commerce research. By synthesizing relevant literature from cognitive psychology, marketing, and e-commerce, this study identifies key contextual factors that are conducive for creating brand positioning on...
متن کاملBeyond Movie Recommendations: Solving the Continuous Cold Start Problem in E-commerceRecommendations
Many e-commerce websites use recommender systems or personalized rankers to personalize search results based on their previous interactions. However, a large fraction of users has no prior interactions, making it impossible to use collaborative filtering or rely on user history for personalization. Even the most active users may visit only a few times a year and may have volatile needs or diffe...
متن کاملReinforcement Learning to Rank in E-Commerce Search Engine: Formalization, Analysis, and Application
In e-commerce platforms such as Amazon and TaoBao, ranking items in a search session is a typical multi-step decision-making problem. Learning to rank (LTR) methods have been widely applied to ranking problems. However, such methods often consider different ranking steps in a session to be independent, which conversely may be highly correlated to each other. For better utilizing the correlation...
متن کاملThe Value of Search Engine Optimization: An Action Research Project at a New E-Commerce Site
A Web site that wants to increase its number of visitors can pay for search engine ads or attempt to improve its natural search engine ranking. Nobody really knows, which, if either, of these methods provides a positive return on investment (ROI). A search engine optimization (SEO) project was undertaken at a new e-commerce site. The site’s search engine rankings and traffic were measured after...
متن کاملIntelligent Search Engine Ranking Algorithm inspired by Recommendation Engines
Every step in the evolution of human kind is associated with the inherent quest for knowledge and substantial growth in intelligence. In the modern world, the thirst for information is quenched by search engines that crawl billions of pages on the World Wide Web. This paper endeavors to make the ranking of the indexed web pages more intelligent by using techniques followed by recommendation eng...
متن کامل