Improving search results with data mining in a thematic search engine
The problem of obtaining relevant results in web searching has been tackled with several
approaches. Although very effective techniques are currently used by the most popular
search engines when no a priori knowledge on the user's desires beside the search
keywords is available, in different settings it is conceivable to design search methods that
operate on a thematic database of web pages that refer to a common body of knowledge or
to specific sets of users. We have considered such premises to design and develop a search …
approaches. Although very effective techniques are currently used by the most popular
search engines when no a priori knowledge on the user's desires beside the search
keywords is available, in different settings it is conceivable to design search methods that
operate on a thematic database of web pages that refer to a common body of knowledge or
to specific sets of users. We have considered such premises to design and develop a search …
The problem of obtaining relevant results in web searching has been tackled with several approaches. Although very effective techniques are currently used by the most popular search engines when no a priori knowledge on the user's desires beside the search keywords is available, in different settings it is conceivable to design search methods that operate on a thematic database of web pages that refer to a common body of knowledge or to specific sets of users. We have considered such premises to design and develop a search method that deploys data mining and optimization techniques to provide a more significant and restricted set of pages as the final result of a user search. We adopt a vectorization method based on search context and user profile to apply clustering techniques that are then refined by a specially designed genetic algorithm. In this paper we describe the method, its implementation, the algorithms applied, and discuss some experiments that has been run on test sets of web pages.
Elsevier
以上显示的是最相近的搜索结果。 查看全部搜索结果