| Keyword search (4,163 papers available) | ![]() |
"Mixtures" Keyword-tagged Publications:
| Title | Authors | PubMed ID | |
|---|---|---|---|
| 1 | Scientists warning: we must change paradigm for a revolution in toxicology and world food supply | Seralini GE; Jungers G; Andersen A; Antoniou M; Aschner M; Bacon MH; Bertrand M; Bohn T; Bonfleur ML; Bücking E; Defarge N; Djemil R; Domingo JL; Douzelet J; Fagan J; Fournier T; Garcia JLY; Gil S; Hervé-Gruyer P; Hilbeck A; Hilty L; Huber D; Joyeux H; Khan I; Kouretas D; Lemarchand F; Loening U; Longo G; Mesnage R; Nikolopoulou DI; Panoff JM; Parente C; Robinson C; Scherber C; Sprangers D; Sultan C; Tsatsakis A; Vandelac L; Wan NF; Wynne B; Zaller JG; Zerrad-Saadi A; Zhang X; | 41551494 CHEMBIOCHEM |
| 2 | Optimizing Mixtures of Metal-Organic Frameworks for Robust and Bespoke Passive Atmospheric Water Harvesting | Harriman C; Ke Q; Vlugt TJH; Howarth AJ; Simon CM; | 41427123 CHEMBIOCHEM |
| 3 | Entropy-Based Variational Scheme with Component Splitting for the Efficient Learning of Gamma Mixtures | Bourouis S; Pawar Y; Bouguila N; | 35009726 ENCS |
| Title: | Entropy-Based Variational Scheme with Component Splitting for the Efficient Learning of Gamma Mixtures | ||||
| Authors: | Bourouis S, Pawar Y, Bouguila N | ||||
| Link: | https://pubmed.ncbi.nlm.nih.gov/35009726/ | ||||
| DOI: | 10.3390/s22010186 | ||||
| Publication: | Sensors (Basel, Switzerland) | ||||
| Keywords: | Gamma mixtures; component splitting; entropy; gesture recognition; objects categorization; texture clustering; variational Bayes; | ||||
| PMID: | 35009726 | Category: | Date Added: | 2022-01-11 | |
| Dept Affiliation: |
ENCS
1 Department of Information Technology, College of Computers and Information Technology, Taif University, P.O. Box 11099, Taif 21944, Saudi Arabia. 2 The Concordia Institute for Information Systems Engineering (CIISE), Concordia University, Montreal, QC H3G 1T7, Canada. |
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Description: |
Finite Gamma mixture models have proved to be flexible and can take prior information into account to improve generalization capability, which make them interesting for several machine learning and data mining applications. In this study, an efficient Gamma mixture model-based approach for proportional vector clustering is proposed. In particular, a sophisticated entropy-based variational algorithm is developed to learn the model and optimize its complexity simultaneously. Moreover, a component-splitting principle is investigated, here, to handle the problem of model selection and to prevent over-fitting, which is an added advantage, as it is done within the variational framework. The performance and merits of the proposed framework are evaluated on multiple, real-challenging applications including dynamic textures clustering, objects categorization and human gesture recognition. |



