papers AI Learner
The Github is limit! Click to go to the new site.

A Focused Crawler Combinatory Link and Content Model Based on T-Graph Principles

2013-05-30
Ali Seyfi

Abstract

The two significant tasks of a focused Web crawler are finding relevant topic-specific documents on the Web and analytically prioritizing them for later effective and reliable download. For the first task, we propose a sophisticated custom algorithm to fetch and analyze the most effective HTML structural elements of the page as well as the topical boundary and anchor text of each unvisited link, based on which the topical focus of an unvisited page can be predicted and elicited with a high accuracy. Thus, our novel method uniquely combines both link-based and content-based approaches. For the second task, we propose a scoring function of the relevant URLs through the use of T-Graph (Treasure Graph) to assist in prioritizing the unvisited links that will later be put into the fetching queue. Our Web search system is called the Treasure-Crawler. This research paper embodies the architectural design of the Treasure-Crawler system which satisfies the principle requirements of a focused Web crawler, and asserts the correctness of the system structure including all its modules through illustrations and by the test results.

Abstract (translated by Google)
URL

https://arxiv.org/abs/1305.7265

PDF

https://arxiv.org/pdf/1305.7265


Similar Posts

Comments