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YZ Sözlüğü

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162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Temporal Matrix Factorization (TMF)

Extension of classical matrix factorization that incorporates temporal constraints to capture the dynamics and evolution of latent factors over time in data.

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Temporal Singular Value Decomposition (SVD)

Application of SVD on temporally structured data matrices, where left and right singular vectors can represent temporal profiles and spatial or thematic entities.

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Dynamic Principal Component Analysis (DPCA)

Dimensionality reduction technique that extends PCA to time series by considering temporal lags of variables to capture dynamic relationships.

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Temporal Latent Factor Model

Statistical framework assuming that observed time series are generated by a smaller number of unobserved latent processes evolving according to their own temporal dynamics.

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PARAFAC/CANDECOMP Decomposition

Tensor factorization method (generalization of matrices to higher dimensions) adapted to multivariate time series, decomposing a tensor into a sum of rank-one tensors.

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Kalman Filter for Decomposition

Recursive state estimation algorithm in a linear dynamic system, used to decompose a time series into components (trend, cycle, seasonality) modeled as hidden states.

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Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (CEEMDAN)

Improved variant of empirical mode decomposition (EMD) that adds adaptive noise to solve mode mixing problems and provide a more stable and complete decomposition.

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Wavelet Decomposition

Technique transforming a time series into the time-frequency domain, allowing isolation of components at different time scales, useful for analyzing non-stationary phenomena.

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Hankel Structured Matrix

Construction of a matrix from a time series where each anti-parallel diagonal has a constant value, a frequent preliminary step for rank-based decomposition methods (SSA).

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Singular Spectrum Analysis (SSA)

Non-parametric method for time series decomposition that projects the series onto a basis of eigenvectors derived from the trajectory matrix (Hankel matrix), separating signal and noise.

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Empirical Mode Decomposition (EMD)

Adaptive, data-driven decomposition algorithm that extracts intrinsic oscillatory components (IMF) from a nonlinear and non-stationary time series through a sifting process.

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Temporal Non-Negative Matrix Factorization (NMF)

Application of NMF to sequential data with temporal regularization constraints (e.g., smoothing) to ensure that basis factors and activation coefficients evolve consistently.

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Stochastic Variance Decomposition (Stochastic SVD)

Variant of SVD computed iteratively on mini-batches of data, suitable for high-dimensional time series streams where exact decomposition is computationally too expensive.

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Temporal PLS Regression (Partial Least Squares)

Modeling method that constructs latent variables by maximizing covariance with the target, while incorporating information from time lags for prediction in time series.

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