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Kamus lengkap Kecerdasan Buatan

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Non-Negative Matrix Factorization (NMF)

Linear algebra technique decomposing a non-negative matrix V into two non-negative matrices W and H, such that V ≈ WH, promoting an additive interpretation of data.

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Basis Matrix (W)

In NMF, the matrix W contains the basis vectors or 'components' that, when linearly combined, reconstruct the original data, with each column representing a fundamental feature.

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Coefficient Matrix (H)

The matrix H in NMF decomposition represents the weights or activation coefficients of each basis (from W) for each data sample, indicating their contribution.

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Factorization Rank

Crucial parameter in NMF, the rank (k) determines the number of components or latent factors to extract, controlling the granularity of decomposition and compression level.

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Mean Squared Error (Frobenius Norm)

Most common cost function in NMF, calculating the sum of squared differences between elements of V and WH, aiming to minimize the overall Euclidean distance.

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Multiplicative Update Rules

Iterative optimization algorithm specific to NMF that updates matrices W and H element by element through multiplication, ensuring maintenance of the non-negativity constraint.

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Sparsity Cost

Regularization term added to the NMF cost function to encourage matrices W and/or H to contain many zeros, improving interpretability and feature selection.

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Convex NMF

Variant of NMF where the basis matrix W is fixed and pre-defined (often from a data dictionary), making the optimization problem convex and guaranteeing a unique solution for H.

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Parallel NMF

Distributed computing approach for NMF, where updates to the elements of matrices W and H are performed simultaneously on multiple cores or computing nodes to accelerate convergence.

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Additive Interpretability

Key advantage of NMF compared to other decompositions like PCA, where components are parts that add up to form the whole, facilitating an intuitive understanding of the data.

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NMF Initialization

Critical process of choosing initial values for matrices W and H, influencing the convergence speed and quality of the final solution, as the optimization is non-convex.

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Orthogonal NMF

Extension of NMF adding an orthogonality constraint on the coefficient matrix H (or the basis W), forcing components to be less correlated and more distinct.

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NMF Stability

Measure of the consistency of NMF solutions obtained from different initializations or data subsamples, low stability indicating a potentially non-robust solution.

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Co-clustering via NMF

Application of NMF where the simultaneous factorization of rows and columns of a matrix reveals clusters of samples and features sharing common latent structures.

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NMF for Signal Processing

Use of NMF to separate audio sources or decompose spectral signals into elementary components (notes, instruments) by exploiting their additive and non-negative nature.

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NMF in Text Analysis

Application of NMF to term-document matrices to discover 'themes' (matrix W) and their contribution (matrix H) in each document, offering clear thematic interpretation.

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Alternating Coordinates Method (ALS)

Optimization strategy for NMF that solves the problem iteratively by fixing one matrix (H) to optimize the other (W), then reversing the roles until convergence.

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