METHOD OF ATTENDANCE ANALYSIS TAKING INTO EXTERNAL FACTORS IN TIME ACCOUNTING SYSTEMS

Authors

  • Anatolii Khramchenko student, Ukraine
  • Valerii Pavlov National Technical University of Ukraine “Igor Sikorsky Kyiv Polytechnic Institute", Ukraine

Keywords:

Time accounting system, k-means clustering, neural network, statistical profiling

Abstract

The article considers a method of attendance analysis in time accounting systems that takes into account external factors and assesses their impact on the deviation of events in time using statistical methods and neural networks.

References

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Published

2026-05-08

Issue

Section

Machine learning, Big Data (AI)