Contextual anomalies in medical data

Daniela Vasco, P. Rodrigues, João Gama
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引用次数: 0

Abstract

Anomalies in data can cause a lot of problems in the data analysis processes. Thus, it is necessary to improve data quality by detecting and eliminating errors and inconsistencies in the data, known as the data cleaning process [1]. Since detection and correction of anomalies requires detailed domain knowledge, the involvement of experts in the field is essential to the success of the process of cleaning the data. However, considering the size of data to be processed, this process should be as automatic as possible so as to minimize the time spent [1].
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医疗数据中的上下文异常
数据中的异常会在数据分析过程中引起很多问题。因此,有必要通过检测和消除数据中的错误和不一致来提高数据质量,称为数据清洗过程[1]。由于异常的检测和纠正需要详细的领域知识,因此该领域专家的参与对于数据清理过程的成功至关重要。但是,考虑到要处理的数据的大小,这个过程应该尽可能的自动化,以最小化所花费的时间[1]。
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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