Accelerating web content filtering by the early decision algorithm

作者:Lin Po Ching*; Liu Ming Dao; Lin Ying Dar; Lai Yuan Cheng
来源:IEICE Transactions on Information and Systems, 2008, E91D(2): 251-257.
DOI:10.1093/ietisy/e91-d.2.251

摘要

Real-time content analysis is typically a bottleneck in Web filtering. To accelerate the filtering process, this work presents a simple, but effective early decision algorithm that analyzes only part of the Web content. This algorithm can make the filtering decision, either to block or to pass the Web content, as soon as it is confident with a high probability that the content really belongs to a banned or an allowed category. Experiments show the algorithm needs to examine only around one-fourth of the Web content on average, while the accuracy remains fairly good: 89% for the banned content and 93% for the allowed content. This algorithm can complement other Web filtering approaches, such as URL blocking, to filter the Web content with high accuracy and efficiency. Text classification algorithms in other applications can also follow the principle of early decision to accelerate their applications.

  • 出版日期2008-2

全文