Rain or shine? Forecasting search process performance in exploratory search tasks
نویسندگان
چکیده
Most information retrieval (IR) systems consider relevance, usefulness, and quality of information objects (documents, queries) for evaluation, prediction, and recommendation, often ignoring the underlying search process of information seeking. This may leave out opportunities for making recommendations that analyze the search process and/or recommend alternative search process instead of objects. To overcome this limitation, we investigated whether by analyzing a searcher’s current processes we could forecast his likelihood of achieving a certain level of success with respect to search performance in the future. We propose a machine-learning-based method to dynamically evaluate and predict search performance several time-steps ahead at each given time point of the search process during an exploratory search task. Our prediction method uses a collection of features extracted from expression of information need and coverage of information. For testing, we used log data collected from 4 user studies that included 216 users (96 individuals and 60 pairs). Our results show 80–90% accuracy in prediction depending on the number of time-steps ahead. In effect, the work reported here provides a framework for evaluating search processes during exploratory search tasks and predicting search performance. Importantly, the proposed approach is based on user processes and is independent of any IR system. Introduction
منابع مشابه
Towards Supporting Exploratory Search over the Arabic Web Content: The Case of ArabXplore
Due to the huge amount of data published on the Web, the Web search process has become more difficult, and it is sometimes hard to get the expected results, especially when the users are less certain about their information needs. Several efforts have been proposed to support exploratory search on the web by using query expansion, faceted search, or supplementary information extracted from exte...
متن کاملAnalysis of the dimensions of the use of search tactics with emphasis on user characteristics and simulated search tasks based on the Anderson and Crasswell classification scheme
Purpose: The purpose of this study is to identify the frequency and time spent in the use of search tactics and the effect of user characteristics and type of search task on the use of search tactics. Methodology: A quantitative approach based on data obtained from Morayeh software used. Sample was 35 post graduate and graduate students majoring in humanities and engineering in Tehran. Four sea...
متن کاملCreating Exploratory Tasks for a Faceted Search Interface
In this paper we describe a process for creating and evaluating exploratory tasks for a faceted search interface. We used the tasks in an eye tracking study of a faceted library catalog search interface. We report on user perceptions of the tasks. The method is intended to be extensible to generate exploratory tasks for other types of interfaces and domains.
متن کاملWeblines: Enabling the Social Transfer of Web Search Expertise using User-Generated Short-form Timelines
Web search encompasses more than fact retrieval; it is a primary entry point for learning. Exploratory search tasks are attempts at such learning and require cognitive, strategic, and interpretive work from the user. The pathways of such searches are likewise complex and nuanced. The present study attempts to enable the human work that goes into conducting exploratory searches to be efficiently...
متن کاملIntent Modeling : Information
COMBINING INTENT MODELING and visual user interfaces can help users discover novel information and dramatically improve their information-exploration performance. Current-generation search engines serve billions of requests each day, returning responses to search queries in fractions of a second. They are great tools for checking facts and looking up information for which users can easily creat...
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:
- JASIST
دوره 67 شماره
صفحات -
تاریخ انتشار 2016