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💬 프롬프트 라이브러리 📖 AI 용어 사전 🔗 유용한 링크

AI 용어집

인공지능 완전 사전

162
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2,032
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23,060
용어
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Probability factor

Non-negative function that represents a local interaction between variables in a factorized probabilistic model. Factors allow decomposition of a complex joint distribution into products of simpler terms.

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Distribution factorization

Mathematical process decomposing a joint probability distribution into a product of simpler local factors. This factorization exploits conditional independencies to reduce computational complexity.

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Mixture model

Probabilistic model representing a distribution as a convex combination of multiple component distributions. Each component models a subgroup or cluster in the data with its own parameters.

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Principal Component Analysis

Linear dimensionality reduction technique transforming correlated variables into orthogonal uncorrelated components. PCA maximizes explained variance with a minimal number of dimensions.

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Non-negative Matrix Factorization

Matrix decomposition algorithm constraining factors to be non-negative, ensuring additive interpretability. Used notably in text analysis and image processing for parts-based representations.

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Latent Dirichlet Allocation

Probabilistic generative model for topic discovery in document collections. LDA assumes each document is a mixture of topics and each topic a distribution over words.

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Markov Random Field

Undirected graphical model where dependencies are specified by factors on variable cliques. MRFs are particularly suited for output structuring problems and spatial modeling.

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Singular Value Decomposition

Matrix factorization decomposing a matrix into a product of three orthogonal and diagonal matrices. SVD provides the best low-rank approximation in the least squares sense and reveals latent structure.

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Chow-Liu Factorization

Algorithm that constructs the optimal dependency tree approximating a multivariate distribution. The method maximizes likelihood under tree structure constraint using mutual information weights.

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