Query Intent Detection Based on Query Log Mining
نویسندگان
چکیده
In this paper we deal with the problem of automatic detection of query intent in search engines. We studied features that have shown good performance in the state-of-theart, combined with novel features extracted from click-through data. We show that the combination of these features gives good precision results. In a second stage, four textbased classifiers were studied to test the usefulness of text-based features. With a low rate of false positives (less than 10 %) the proposed classifiers can detect query intent in over 90% of the evaluation instances. However due to a notorious unbalance in the classes, the proposed classifiers show poor results to detect transactional intents. We address this problem by including a cost sensitive learning strategy, allowing to solve the skewed data distribution. Finally, we explore the use of classifier ensembles which allow to us to achieve the best performance for the task.
منابع مشابه
Discovering Popular Clicks\' Pattern of Teen Users for Query Recommendation
Search engines are still the most important gates for information search in internet. In this regard, providing the best response in the shortest time possible to the user's request is still desired. Normally, search engines are designed for adults and few policies have been employed considering teen users. Teen users are more biased in clicking the results list than are adult users. This leads...
متن کاملAnalysis of User query refinement behavior based on semantic features: user log analysis of Ganj database (IranDoc)
Background and Aim: Information systems cannot be well designed or developed without a clear understanding of needs of users, manner of their information seeking and evaluating. This research has been designed to analyze the Ganj (Iranian research institute of science and technology database) users’ query refinement behaviors via log analysis. Methods: The method of this research is log anal...
متن کاملQuery expansion based on relevance feedback and latent semantic analysis
Web search engines are one of the most popular tools on the Internet which are widely-used by expert and novice users. Constructing an adequate query which represents the best specification of users’ information need to the search engine is an important concern of web users. Query expansion is a way to reduce this concern and increase user satisfaction. In this paper, a new method of query expa...
متن کاملIntent Role Oriented Query Parsing and Its Application in Subtopic Mining
Nowadays, web search engines are playing an increasingly dominant role in people’s daily information access on the web. But the majority of users are submitting short queries, many of which are ambiguous and/or underspecified. Thus, understanding the underlying intent or information need encoded within a query has become an essential step for effective information retrieval. Based on the statem...
متن کاملMining Search Subtopics from Query Logs
Web queries are usually short and ambiguous. Subtopic mining plays an important role in understanding user’s search intent and has attracted many researchers' attention. In this paper, we describe our approach to identify users’ intents from query logs, which is a subtopic mining subtask of the NTCIR-9 Intent task for Chinese. We extract queries that are semantically related to the original que...
متن کاملQuery Understanding in Web Search - by Large Scale Log Data Mining and Statistical Learning
Query understanding is an important component of web search, like document understanding, query document matching, ranking, and user understanding. The goal of query understanding is to predict the user’s search intent from the given query. Needless to say, search log mining and statistical learning are fundamental technologies to address the task of query understanding. In this talk, I will fi...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- J. Web Eng.
دوره 13 شماره
صفحات -
تاریخ انتشار 2014