The role of data reduction for diagnosis of pathologies of the vertebral column by using supervised learning algorithms

Thibaut Judicael Bah, B. Karlik
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引用次数: 3

Abstract

Today in data mining research we are daily confronted with large amount of data. Most of the time, these data contain redundant and irrelevant data that it is important to extract before a learning task in order to get good accuracy. The fact that today's computers are more powerful does not solves the problems of this ever-growing data. It is therefore crucial to find techniques which allow handling these large databases often too big to be processed. Data reduction techniques are therefore a very important step to prepare the data before data mining and knowledge discovery. In this paper we present a comparative study on original and reduced data to see the role data reduction in a learning task. For this purpose, we used a medical dataset; especially a vertebral column pathologies database.
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使用监督学习算法的数据减少在脊柱病理诊断中的作用
在数据挖掘研究中,我们每天都要面对大量的数据。大多数情况下,这些数据包含冗余和不相关的数据,为了获得良好的准确性,在学习任务之前提取这些数据非常重要。今天的计算机更加强大的事实并不能解决不断增长的数据所带来的问题。因此,找到能够处理这些大型数据库的技术是至关重要的,这些数据库通常太大而无法处理。因此,数据约简技术是在数据挖掘和知识发现之前准备数据的一个非常重要的步骤。在本文中,我们对原始数据和约简数据进行了比较研究,以了解数据约简在学习任务中的作用。为此,我们使用了一个医学数据集;尤其是脊柱病理数据库。
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