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An Adaptive Web Page Recommendation Service (1997)

by Marko Balabanovic
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A Framework for Collaborative, Content-Based and Demographic Filtering

by Michael J. Pazzani - ARTIFICIAL INTELLIGENCE REVIEW , 1999
"... We discuss learning a profile of user interests for recommending information sources such as Web pages or news articles. We describe the types of information available to determine whether to recommend a particular page to a particular user. This information includes the content of the page, the rat ..."
Abstract - Cited by 158 (6 self) - Add to MetaCart
We discuss learning a profile of user interests for recommending information sources such as Web pages or news articles. We describe the types of information available to determine whether to recommend a particular page to a particular user. This information includes the content of the page, the ratings of the user on other pages and the contents of these pages, the ratings given to that page by other users and the ratings of these other users on other pages and demographic information about users. We describe how each type of information may be used individually and then discuss an approach to combining recommendations from multiple sources. We illustrate each approach and the combined approach in the context of recommending restaurants.

Personalised hypermedia presentation techniques for improving online customer relationships

by Alfred Kobsa, Jürgen Koenemann, Wolfgang Pohl , 2001
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Abstract - Cited by 150 (19 self) - Add to MetaCart
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Context in Web Search

by Steve Lawrence - IEEE Data Engineering Bulletin , 2000
"... Web search engines generally treat search requests in isolation. The results for a given query are identical, independent of the user, or the context in which the user made the request. Nextgeneration search engines will make increasing use of context information, either by using explicit or implici ..."
Abstract - Cited by 100 (0 self) - Add to MetaCart
Web search engines generally treat search requests in isolation. The results for a given query are identical, independent of the user, or the context in which the user made the request. Nextgeneration search engines will make increasing use of context information, either by using explicit or implicit context information from users, or by implementing additional functionality within restricted contexts. Greater use of context in web search may help increase competition and diversity on the web.

CiteSeer: An Autonomous Web Agent for Automatic Retrieval and Identification of Interesting Publications

by Kurt D. Bollacker, Steve Lawrence, C. Lee Giles - INTERNATIONAL CONFERENCE ON AUTONOMOUS AGENTS , 1998
"... Published research papers available on the World Wide Web (WWW or Web) are often poorly organized, often exist in non-text form (e.g. Postscript) documents, and increase in quantity daily. Significant amounts of time and effort are commonly needed to find interesting and relevant publications on the ..."
Abstract - Cited by 99 (4 self) - Add to MetaCart
Published research papers available on the World Wide Web (WWW or Web) are often poorly organized, often exist in non-text form (e.g. Postscript) documents, and increase in quantity daily. Significant amounts of time and effort are commonly needed to find interesting and relevant publications on the Web. We have developed a Web based information agent that assists the user in the process of performing a scientific literature search. Given a set of keywords, the agent uses Web search engines and heuristics to locate and download papers. The papers are parsed in order to extract information features such as the abstract and individually identified citations which are placed into an SQL database. The agent's Web interface can be used to find relevant papers in the database using keyword searches, or by navigating the links between papers formed by the citations. Links to both "citing " and "cited " publications can be followed. In addition to simple browsing and keyword searches, the agent can find papers which are similar to a given paper using word information and by analyzing common citations made by the papers.

Detecting Concept Drift with Support Vector Machines

by Ralf Klinkenberg, Thorsten Joachims - In Proceedings of the Seventeenth International Conference on Machine Learning (ICML , 2000
"... For many learning tasks where data is collected over an extended period of time, its underlying distribution is likely to change. A typical example is information filtering, i.e. the adaptive classification of documents with respect to a particular user interest. Both the interest of the user and th ..."
Abstract - Cited by 72 (8 self) - Add to MetaCart
For many learning tasks where data is collected over an extended period of time, its underlying distribution is likely to change. A typical example is information filtering, i.e. the adaptive classification of documents with respect to a particular user interest. Both the interest of the user and the document content change over time. A filtering system should be able to adapt to such concept changes. This paper proposes a new method to recognize and handle concept changes with support vector machines. The method maintains a window on the training data. The key idea is to automatically adjust the window size so that the estimated generalization error is minimized. The new approach is both theoretically well-founded as well as effective and efficient in practice. Since it does not require complicated parameterization, it is simpler to use and more robust than comparable heuristics. Experiments with simulated concept drift scenarios based on real-world text data com...

Information retrieval on the Web

by Mei Kobayashi, Koichi Takeda - ACM Computing Surveys , 2000
"... In this paper we review studies of the growth of the Internet and technologies that are useful for information search and retrieval on the Web. We present data on the Internet from several different sources, e.g., current as well as projected number of users, hosts, and Web sites. Although numerical ..."
Abstract - Cited by 58 (0 self) - Add to MetaCart
In this paper we review studies of the growth of the Internet and technologies that are useful for information search and retrieval on the Web. We present data on the Internet from several different sources, e.g., current as well as projected number of users, hosts, and Web sites. Although numerical figures vary, overall trends cited

A Non-Invasive Learning Approach to Building Web User Profiles

by Philip K. Chan , 1999
"... Introduction Recently researchers have started to make web browsers more adaptive and personalized. A personalized web browser caters to the user's interests and an adaptive one learns from the users' (potentially changing) access behavior. The goal is to help the user navigate the web. Lieberman's ..."
Abstract - Cited by 46 (4 self) - Add to MetaCart
Introduction Recently researchers have started to make web browsers more adaptive and personalized. A personalized web browser caters to the user's interests and an adaptive one learns from the users' (potentially changing) access behavior. The goal is to help the user navigate the web. Lieberman's Letizia [13] monitors the user's browsing behavior, develops a user profile, and searches for potentially interesting pages for recommendations. The user profile is developed without intervention from the user (but the details of how that is performed is not clear in [13]). While the user is reading a page, Letizia searches, in a breadth-first manner, from that location, pages that could be of interest to the user. Pazzani et al.'s Syskill & Webert [18, 19] asks the user to rank pages in a specific topic. Based on the content and ratings of pages, the system learns a user profile that predicts if pages are of interest to th

A system for automatic personalized tracking of scientific literature on the web

by Kurt D. Bollacker, Steve Lawrence, C. Lee Giles - In Digital Libraries 99 - The Fourth ACM Conference on Digital Libraries , 1999
"... We introduce a system as part of the CiteSeer digital library project for automatic tracking of scientific literature that is relevant to a user’s research interests. Unlike previous systems that use simple keyword matching, CiteSeer is able to track and recommend topically relevant papers even when ..."
Abstract - Cited by 42 (4 self) - Add to MetaCart
We introduce a system as part of the CiteSeer digital library project for automatic tracking of scientific literature that is relevant to a user’s research interests. Unlike previous systems that use simple keyword matching, CiteSeer is able to track and recommend topically relevant papers even when keyword based query profiles fail. This is made possible through the use of a heterogenous profile to represent user interests. These profiles include several representations, including content based relatedness measures. The CiteSeer tracking system is well integrated into the search and browsing facilities of CiteSeer, and provides the user with great flexibility in tuning a profile to better match his or her interests. The software for this system is available, and a sample database is online as a public service.

Using Machine Learning To Improve Information Access

by Mehran Sahami, Daphne Koller, Marti Hearst, Nils J. Nilsson , 1999
"... The explosion of on-line information has given rise to many query-based search engines (such as Alta Vista) and manually constructed topic hierarchies (such as Yahoo! ). But with the current growth rate in the amount of information, query results grow incomprehensibly large and manual classification ..."
Abstract - Cited by 38 (0 self) - Add to MetaCart
The explosion of on-line information has given rise to many query-based search engines (such as Alta Vista) and manually constructed topic hierarchies (such as Yahoo! ). But with the current growth rate in the amount of information, query results grow incomprehensibly large and manual classification in topic hierarchies creates an immense information bottleneck. Therefore, these tools are rapidly becoming inadequate for addressing users' information needs. In this dissertation, we address these problems with a system for topical information space navigation that combines the query-based and taxonomic approaches. Our system, named SONIA (Service for Organizing Networked Information Au- tonomously), is implemented as part of the Stanford Digital Libraries testbed. It enables the creation of dynamic hierarchical document categorizations based on the full-text of articles. Using probability theory as a formal foundation, we develop several Machine Learning methods to allow document collections to be automatically organized at a topical level. First, to generate such topical hierarchies, we employ a novel probabilistic clustering scheme that outperforms traditional methods used in both Information Retrieval and Probabilistic Reasoning. Furthermore, we develop methods for classifying new articles into such automatically generated, or existing manually generated, hierarchies. In contrast to standard classification approaches which do not make use of the taxonomic relations in a topic hierarchy, our method explicitly uses the existing hierarchical relationships between topics, leading to improvements in classification accuracy. Much of this improvement is derived from the fact that the classification decisions in such a hierarchy can be made by considering only the presence (o...

Software Agents: A Review

by Shaw Green, Leon Hurst, Brenda Nangle, Dr. Pádraig Cunningham, Fergal Somers , 1997
"... ..."
Abstract - Cited by 34 (0 self) - Add to MetaCart
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