Hybrid Hill-Climbing and Knowledge-Based Techniques for Intelligent News Filtering
نویسنده
چکیده
As the size of the Internet increases, the amount of data available to users has dramatically risen, resulting in an information overload for users. This work involved the creation of an intelligent information news filtering system named INFOS (Intelligent News Filtering Organizational System) to reduce the user’s search burden by automatically eliminating Usenet news articles predicted to be irrelevant. These predictions are learned automatically by adapting an internal user model that is based upon features taken from articles and collaborative features derived from other users. The features are manipulated through keyword-based techniques and knowledge-based techniques to perform the actual filtering. Knowledge-based systems have the advantage of analyzing input text in detail, but at the cost of computational complexity and the difficulty of scaling up to large domains. In contrast, statistical and keyword approaches scale up readily but result in a shallower understanding of the input. A hybrid system integrating both approaches improves accuracy over keyword approaches, supports domain knowledge, and retains scalability. Content Areas: software agents Abstract ID: A626 Word Count: 6728
منابع مشابه
Intelligent Information Filtering via Hybrid Techniques : Hill Climbing , Case - Based Reasoning , Index Patterns , and Genetic Algorithms
As the size of the Internet increases, the amount of data available to users has dramatically risen, resulting in an information overload for users. This work shows that information overload is a problem, and that data is organized poorly by existing browsers. To address these problems, an intelligent information news filtering system named INFOS (Intelligent News Filtering Organizational Syste...
متن کاملInformation filtering via hill climbing, wordnet, and index patterns
The recent explosion in Internet growth has left many users awash in a sea of information, and has spurred the need for intelligent filtering systems. This paper describes work implemented in the INFOS (Intelligent News Filtering Organizational System) filtering system that is designed to reduce the user's search burden by automatically categorizing data as relevant or irrelevant based upon use...
متن کاملntelligent News Filtering
As the size of the Internet increases, the amount of data available to users has dramatically risen, resulting in an information overload for users. This work involved the creation of an intelligent information news filtering system named INFOS (Intelligent News Filtering Organizational System) to reduce the user’s search burden by automatically eliminating Usenet news articles predicted to be ...
متن کاملAdaptive User Models for Intelligent Information Filtering
As networked systems grow in size, the amount of data available to users has increased dramatically. The result is an information overload for the user. In this project, an intelligent information filtering system reduced the user's search burden by automatically eliminating incoming data predicted to be irrelevant. These predictions are learned by adapting an internal user model which is based...
متن کاملA Proposed Improved Hybrid Hill Climbing Algorithm with the Capability of Local Search for Solving the Nonlinear Economic Load Dispatch Problem
This paper introduces a new hybrid hill-climbing algorithm (HHC) for solving the Economic Dispatch (ED) problem. This algorithm solves the ED problems with a systematic search structure with a global search. It improves the results obtained from an evolutionary algorithm with local search and converges to the best possible solution that grabs the accuracy of the problem. The most important goal...
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:
دوره شماره
صفحات -
تاریخ انتشار 1996