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| マルチモーダルLDAトピックモデル× | NMFトピックモデル× | |
|---|---|---|
| 分野 | 深層学習 | 深層学習 |
| 系統 | Machine learning | Machine learning |
| 提唱年≠ | 2003 | 1999 |
| 提唱者≠ | Blei, D. M. & Jordan, M. I. | Lee, D. D. & Seung, H. S. |
| 種類≠ | Probabilistic generative topic model (multimodal) | Matrix factorization / unsupervised topic model |
| 原典≠ | Blei, D. M. & Jordan, M. I. (2003). Modeling annotated data. Proceedings of the 26th Annual International ACM SIGIR Conference on Research and Development in Information Retrieval, 127–134. DOI ↗ | 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 | Multimodal LDA, mm-LDA, multimodal topic model, cross-modal LDA | NMF, Non-negative Matrix Factorization, NMF for Topic Modeling, NNMF Topic Model |
| 関連≠ | 6 | 4 |
| 概要≠ | Multimodal LDA extends Latent Dirichlet Allocation to jointly model multiple data modalities — most often text and images — within a single probabilistic topic framework. Each document or data instance is represented as a mixture of latent topics shared across modalities, enabling the model to discover coherent themes that align visual and linguistic content simultaneously. | Non-negative Matrix Factorization (NMF) is an unsupervised matrix decomposition method that discovers latent topics in a text corpus by factoring a document-term matrix into two non-negative matrices — one encoding topic-word weights, the other document-topic weights. The non-negativity constraint yields parts-based, additive representations that tend to produce clean, interpretable topics. |
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