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XML Data Retrieval Model Based On Two-dimensional Table Datasets

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TLDR
A data retrieval model advantageous to xml representation is established using the system automatically build two-dimensional table datasets and the text segmentation technique and the XSL style sheet conversion technology.
Abstract
Retrieval problems of XML-based representation of data have been researched in this paper. In order to solve the large time and space overhead problem in building content index, this paper establish a data retrieval model advantageous to xml representation using the system automatically build two-dimensional table datasets. Take crop diseases and insect pests data for an example, this paper first gives the architecture of retrieval system based on XML crop diseases and insect pests' data; it also discusses about how to construct the two-dimensional table dataset and achieve the retrieval process; then it describes the text segmentation technique and the XSL style sheet conversion technology. Finally, under the VS.NET platform, using MVC design pattern develop and implement a prototype. Copyright © 2013 IFSA.

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A Survey of Uncertain Data Algorithms and Applications

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