Analysis and Synthesis of Technology for Textual Information Classification

Vladyslav A. Kuznetsov, I. Krak, Volodymyr Lіashko, V. Kasianiuk
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Abstract

The task of developing effective text information classification systems requires the thoughtful analysis and synthesis of variable components of technology. These components strongly affect the practical efficiency and the requirements to the data. For this purpose, a typical technology was discussed, comparing the regular “learning from features” approach versus the more advanced “deep learning” approach, that studies from data. In order to implement the technology, the first approach was tested, which included the means (methods, algorithms) for analysis of the features of the source text, by applying the dimensionality transformation, and building model solutions that allow the correct classification of data by a set of features. As a result, all the steps of the technology are described, which allowed to determine the way of presenting data in terms of hidden features in data, their presentation in a standard visual form and evaluate the solution, as well as its practical efficiency, based on this set of features. In a depth study, the informational core of the document was studied, using the regression and T-stochastic grouping of features for dimensionality reduction.The separate results contain estimation of practical efficiency of the algorithms in terms of time and relative performance for each step of the proposed technology. This estimation gives a possibility to obtain the best algorithm of intelligent data processing that is useful for a given dataset and application. In order to estimate the best suited algorithm for separation in reduced dimension an experiment was carried out which allowed the selection of the best range of data classification algorithms, in particular boosting methods. As a result of the analysis of the technology, the necessary steps of this technology were discussed and the classification on real text data was conducted, which allowed to identify the most important stages of the technology for text classification.
文本信息分类技术的分析与综合
开发有效的文本信息分类系统的任务需要对技术的可变组成部分进行深思熟虑的分析和综合。这些因素对实际工作效率和对数据的要求有很大的影响。为此,讨论了一种典型的技术,比较了常规的“从特征中学习”方法和更先进的“深度学习”方法,即从数据中学习。为了实现该技术,对第一种方法进行了测试,其中包括通过应用维度转换来分析源文本特征的手段(方法、算法),以及构建允许根据一组特征对数据进行正确分类的模型解决方案。因此,对该技术的所有步骤进行了描述,从而可以根据数据中的隐藏特征确定数据的表示方式,以标准的可视化形式表示它们,并基于这组特征评估解决方案及其实际效率。在深入研究中,研究了文档的信息核心,使用回归和特征的t随机分组进行降维。单独的结果包含算法在时间和相对性能方面的实际效率的估计,对于所提出的技术的每个步骤。这种估计为获得对给定数据集和应用有用的智能数据处理的最佳算法提供了可能。为了估计最适合的降维分离算法,进行了一项实验,该实验允许选择最佳范围的数据分类算法,特别是增强方法。通过对该技术的分析,讨论了该技术的必要步骤,并对实际文本数据进行了分类,从而确定了文本分类技术中最重要的阶段。
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