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Entropy based informative content density approach for efficient web content extraction

机译:基于熵的信息内容密度方法,可有效地提取Web内容

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Web content extraction is a popular technique for extracting the main content from web pages and discards the irrelevant content. Extracting only the relevant content is a challenging task since it is difficult to determine which part of the web page is relevant and which part is not. Among the existing web content extraction methods, density based content extraction is one popular method. However density based methods, suffer from poor efficiency, especially when the pages containing less information and long noise. We propose a web content extraction technique build on Entropy based Informative Content Density algorithm (EICD). The proposed EICD algorithm initially analyses higher text density content. Further, the entropy-based analysis is performed for selected features. The key idea of EICD is to utilize the information entropy for representing the knowledge that correlates to the amount of informative content in a page. The proposed method is validated through simulation and the results are promising.
机译:Web内容提取是一种从Web页面提取主要内容并丢弃不相关内容的流行技术。仅提取相关内容是一项艰巨的任务,因为很难确定网页的哪一部分是相关的,而哪一部分是无关的。在现有的Web内容提取方法中,基于密度的内容提取是一种流行的方法。然而,基于密度的方法效率低下,尤其是当页面包含较少的信息和较长的噪音时。我们提出了一种基于基于熵的信息内容密度算法(EICD)的Web内容提取技术。提出的EICD算法最初分析较高的文本密度内容。此外,针对所选特征执行基于熵的分析。 EICD的关键思想是利用信息熵来表示与页面中信息内容量相关的知识。仿真结果验证了所提方法的有效性。

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