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NoLAW: A Recursive Non-Linear Adaptive Wiener Filter for Time Series Smoothing

  • 20-09-2025
  • Original Article

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Abstract

This article introduces the NoLAW filter, a recursive non-linear adaptive Wiener filter designed for time series smoothing. The method is particularly effective in eliminating random disturbances while preserving useful signal information, addressing the challenges posed by non-stationary time series. The article provides a detailed mathematical derivation of the NoLAW filter, comparing it with traditional linear filters and exponential smoothing techniques. It also includes a complexity analysis, demonstrating that the NoLAW filter maintains linear computational complexity, making it scalable for both short and long time series. Experimental results across 20 diverse datasets show that NoLAW consistently outperforms traditional smoothing techniques in terms of denoising accuracy, as measured by the Mean Absolute Percentage Error (MAPE). The article also discusses the practical implications of the NoLAW filter, including its potential for real-time applications and the need for dynamic parameter optimization. Additionally, it explores future research directions, such as extending the method to other types of noise and combining it with neural network architectures. The article concludes by highlighting the strengths and limitations of the NoLAW filter, providing a comprehensive overview of its potential impact on time series analysis.

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Title
NoLAW: A Recursive Non-Linear Adaptive Wiener Filter for Time Series Smoothing
Author
Alexandre L. M. Levada
Publication date
20-09-2025
Publisher
Springer Berlin Heidelberg
Published in
Annals of Data Science
Print ISSN: 2198-5804
Electronic ISSN: 2198-5812
DOI
https://doi.org/10.1007/s40745-025-00646-4
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