The Intention Behind Web Queries
نویسندگان
چکیده
The identification of the user’s intention or interest through queries that they submit to a search engine can be very useful to offer them more adequate results. In this work we present a framework for the identification of user’s interest in an automatic way, based on the analysis of query logs. This identification is made from two perspectives, the objectives or goals of a user and the categories in which these aims are situated. A manual classification of the queries was made in order to have a reference point and then we applied supervised and unsupervised learning techniques. The results obtained show that for a considerable amount of cases supervised learning is a good option, however through unsupervised learning we found relationships between users and behaviors that are not easy to detect just taking the query words. Also, through unsupervised learning we established that there are categories that we are not able to determine in contrast with other classes that were not considered but naturally appear after the clustering process. This allowed us to establish that the combination of supervised and unsupervised learning is a good alternative to find user’s goals. From supervised learning we can identify the user interest given certain established goals and categories; on the other hand, with unsupervised learning we can validate the goals and categories used, refine them and select the most appropriate to the user’s needs.
منابع مشابه
Context-Aware Online Commercial Intention Detection
With more and more commercial activities moving onto the Internet, people tend to purchase what they need through Internet or conduct some online research before the actual transactions happen. For many Web users, their online commercial activities start from submitting a search query to search engines. Just like the common Web search queries, the queries with commercial intention are usually v...
متن کاملAnalysis of users’ query reformulation behavior in Web with regard to Wholis-tic/analytic cognitive styles, Web experience, and search task type
Background and Aim: The basic aim of the present study is to investigate users’ query reformulation behavior with regard to wholistic-analytic cognitive styles, search task type, and experience variables in using the Web. Method: This study is an applied research using survey method. A total of 321 search queries were submitted by 44 users. Data collection tools were Riding’s Cognitive Style A...
متن کاملIntentional Process Mining: Discovering and Modeling the Goals Behind Processes using Supervised Learning
Understanding people’s goals is a challenging issue that is met in many different areas such as security, sales, information retrieval, etc. Intention Mining aims at uncovering intentions from observations of actual activities. While most Intention Mining techniques proposed so far focus on mining individual intentions to analyze web engine queries, this paper proposes a generic technique to mi...
متن کاملDetermining the User Intent Behind Web Search Queries by Learning from Past User Interactions with Search Results
Understanding the intent of users behind their web search queries is very useful in serving them with relevant advertisements and in ranking the search results effectively. Existing approaches broadly classify the user intent behind web queries into three categories: navigational, informational and transactional. In this study, we present a query classification framework that attempts to automa...
متن کاملImplementation of Intention-driven Search Processes by SPARQL Queries
Capitalisation of search processes becomes a real challenge in many domains. By search process, we mean a sequence of queries that enables a community member to find comprehensive and accurate information by composing results from different information sources. In this paper we propose a intentional model based on semantic Web technologies and models and aiming both at the capitalization, reuse...
متن کامل