Advanced Techniques for Time Series Data Feature Engineering
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This article discusses advanced techniques for time series feature engineering, such as Fourier transform, wavelet transformation, derivatives, and autocorrelation. These methods help uncover hidden structures, capture time and frequency information, and measure linear relationships between data points, thereby enhancing the performance of machine learning models.
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