Algorithms of statistical anomalies clearing for data science applications

The paper considers the nature of input data used by Data Science algorithms of modern-day application domains. It then proposes three algorithms designed to remove statistical anomalies from datasets as a part of the Data Science pipeline. The main advantages of given algorithms are their relative...

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Bibliographic Details
Main Authors: Oleksii Pysarchuk, Danylo Baran, Yurii Mironov, Illya Pysarchuk
Format: Article
Language:Ukrainian
Published: Igor Sikorsky Kyiv Polytechnic Institute 2023-03-01
Series:Sistemnì Doslìdženâ ta Informacìjnì Tehnologìï
Subjects:
Online Access:http://journal.iasa.kpi.ua/article/view/260175
Description
Summary:The paper considers the nature of input data used by Data Science algorithms of modern-day application domains. It then proposes three algorithms designed to remove statistical anomalies from datasets as a part of the Data Science pipeline. The main advantages of given algorithms are their relative simplicity and a small number of configurable parameters. Parameters are determined by machine learning with respect to the properties of input data. These algorithms are flexible and have no strict dependency on the nature and origin of data. The efficiency of the proposed approaches is verified with a modeling experiment conducted using algorithms implemented in Python. The results are illustrated with plots built using raw and processed datasets. The algorithms application is analyzed, and results are compared.
ISSN:1681-6048
2308-8893