A Deep Web Data Extraction Framework Enhancement Method

Salar Faisal Noori, Bazeer Ahamed B
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Abstract

The solutions for the data extraction problem are based on an analysis of the HTML DOM trees and the response page tags. These techniques rely highly on HTML specifications, even though they can produce good results. To effectively disclose in-depth online data, this research provides a methodology with two stages to address the problem. To find the user’s text query, the suggested system first performs “normal crawling.” A method is suggested based on the crawler’s received moved forward weighting work (ITF-IDF) to choose important websites. “data region extraction” is carried out in the second stage to gather data records. The suggested data extractor extracts visual blocks using the blocks’ visual characteristics. According to the suggested technique, the visual blocks should be grouped into similar formats based on format trees and appearance similarity. The visual blocks that will be extracted as information records from the cluster with the highest weight are those that are selected. The test reveals that the system’s suggested outline is superior to earlier information extraction efforts.
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一种深度网络数据提取框架增强方法
数据提取问题的解决方案基于对HTML DOM树和响应页面标记的分析。这些技术高度依赖于HTML规范,尽管它们可以产生良好的结果。为了有效地披露深度在线数据,本研究提供了一个分两个阶段的方法来解决这个问题。为了找到用户的文本查询,建议的系统首先执行“正常爬行”。提出了一种基于爬虫接收前移加权工作(ITF-IDF)的重要网站选择方法。第二阶段进行“数据区域提取”,收集数据记录。提出的数据提取器利用视觉块的视觉特征提取视觉块。根据所建议的技术,应根据格式树和外观相似性将视觉块分组为相似的格式。将从权重最高的聚类中提取作为信息记录的可视化块是那些被选中的。测试表明,系统建议的大纲优于早期的信息提取工作。
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