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説明可能なLDAトピックモデル×非負値行列因子分解 (NMF)×
分野深層学習機械学習
系統Machine learningLatent structure
提唱年2003 (LDA); 2018–present (explainability extensions)1999
提唱者Blei, D. M., Ng, A. Y., & Jordan, M. I. (LDA seminal); explainability extensions by multiple authorsLee, D. D. & Seung, H. S.
種類Probabilistic generative topic model with interpretability enhancementsMatrix decomposition with non-negativity constraints
原典Blei, D. M., Ng, A. Y., & Jordan, M. I. (2003). Latent Dirichlet Allocation. Journal of Machine Learning Research, 3, 993–1022. link ↗Lee, D. D., & Seung, H. S. (1999). Learning the parts of objects by non-negative matrix factorization. Nature, 401(6755), 788–791. DOI ↗
別名Explainable LDA, Interpretable LDA, XAI-LDA, Transparent Topic ModelNMF, NNMF, nonnegative matrix factorization, non-negative matrix approximation
関連44
概要Explainable LDA combines Latent Dirichlet Allocation — the canonical probabilistic topic model introduced by Blei, Ng, and Jordan in 2003 — with post-hoc and intrinsic interpretability tools that make each discovered topic auditable, labeled, and trustworthy for human reviewers. It is widely used in NLP, social science text analysis, and computational humanities where transparency is required alongside discovery.Non-negative Matrix Factorization (NMF) is a family of algorithms, introduced by Lee and Seung in their landmark 1999 Nature paper, that decomposes a non-negative data matrix V into the product of two lower-rank non-negative matrices W (basis components) and H (encoding coefficients). Unlike PCA or SVD, the non-negativity constraint forces the algorithm to learn strictly additive, parts-based representations, making the factors directly interpretable as building blocks of the original data.
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ScholarGate手法を比較: Explainable LDA Topic Model · Non-negative Matrix Factorization. 2026-06-15に以下より取得 https://scholargate.app/ja/compare