Compact Data Learning For Time-Series Forecasting Systems

研究成果: Conference contribution同行評審

摘要

This paper focuses on optimizing machine learning-based time-series forecasting models by constructing compact data. Methods for optimizing ML training have been improved and integrated into the development of artificial intelligence (AI) systems. Compact Data Learning (CDL) serves as an alternative practical framework to optimize machine learning (ML) systems by reducing the size of the sampling data. This framework originated from compact data design, providing optimal assets without handling complex big data. Compact Data Learning for Time-Series (CDL-TS) is a novel framework aimed at minimizing forecasting model errors. By utilizing reduced sampling and robust comparison procedures, CDL-TS addresses the challenges of forecasting models on extensive real-time data systems. Additionally' an analytic solution for the M/M/1 queueing system with continuous time parameters under finite time limits is presented in this research. The major contributions are valuable insights and practical techniques for improving model training efficiency, particularly in reducing data volume for continuous time-series data.

原文English
主出版物標題ICECIE 2024 - 2024 6th International Conference on Electrical, Control and Instrumentation Engineering, Proceedings
發行者Institute of Electrical and Electronics Engineers
ISBN(電子)9798350380040
DOIs
出版狀態Published - 2024
事件6th International Conference on Electrical, Control and Instrumentation Engineering, ICECIE 2024 - Pattaya, Thailand
持續時間: 23 11月 2024 → …

出版系列

名字Proceedings, International Conference on Electrical, Control and Instrumentation Engineering, ICECIE
ISSN(列印)2832-9821
ISSN(電子)2832-9848

Conference

Conference6th International Conference on Electrical, Control and Instrumentation Engineering, ICECIE 2024
國家/地區Thailand
城市Pattaya
期間23/11/24 → …

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