Visual Identification of Inconsistency in Pattern

Nwagwu Honour Chika, Ukekwe Emmanuel, Ugwoke Celestine, Ndoumbe Dora, G. Okereke
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Abstract

The visual identification of inconsistencies in patterns is an area in computing that has been understudied. While pattern visualisation exposes the relationships among identified regularities, it is still very important to identify inconsistencies (irregularities) in identified patterns. The significance of identifying inconsistencies for example in the growth pattern of children of a particular age will enhance early intervention such as dietary modifications for stunted children. It is described in this chapter, the need to have a system that identifies inconsistencies in identified pattern of a dataset. Also, techniques that enable the visual identification of inconsistencies in patterns such as fault tolerance and colour coding are described. Two approaches are presented in this chapter for visualising inconsistencies in patterns namely; visualising inconsistencies in objects with many attribute values and visual comparison of an investigated dataset with a case control dataset. These approaches are associated with tools which were developed by the authors of this chapter: Firstly, ConTra which allows its users to mine and analyse the contradictions in attribute values whose data does not abide by the mutual exclusion rule of the dataset. Secondly, Datax which mines missing data; enables the visualisation of the missingness and the identification of the associated patterns. Finally, WellGrowth which explores Children’s growth dataset by comparing an investigated dataset (data obtained from a Primary Health Centre) with a case control dataset (data from the website of World Health Organisation). Instances of inconsistencies as discovered in the explored datasets are discussed.
模式不一致的视觉识别
模式不一致性的视觉识别是计算中尚未得到充分研究的一个领域。虽然模式可视化暴露了已识别规则之间的关系,但识别已识别模式中的不一致性(不规则性)仍然非常重要。识别诸如特定年龄儿童生长模式的不一致性的重要性将加强早期干预,例如对发育迟缓儿童的饮食调整。这是在本章中描述的,需要有一个系统来识别数据集的识别模式中的不一致性。此外,还描述了能够对模式中的不一致性进行可视识别的技术,例如容错和颜色编码。本章提出了两种可视化模式不一致性的方法,即;可视化具有许多属性值的对象的不一致性,以及调查数据集与案例控制数据集的可视化比较。这些方法与本章作者开发的工具相关:首先,ConTra允许其用户挖掘和分析属性值中的矛盾,这些属性值的数据不遵守数据集的互斥规则。二是挖掘缺失数据的Datax;支持缺失的可视化和相关模式的识别。最后,WellGrowth通过比较调查数据集(从初级卫生中心获得的数据)和病例控制数据集(来自世界卫生组织网站的数据)来探索儿童成长数据集。讨论了在探索的数据集中发现的不一致的实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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