Title :
Self-Adjusting Models for Semi-supervised Learning in Partially Observed Settings
Author :
Akova, F. ; Dundar, Murat ; Yuan Qi ; Rajwa, Bartlomiej
Author_Institution :
Comput. & Inf. Sci. Dept., IUPUI, Indianapolis, IN, USA
Abstract :
We present a new direction for semi-supervised learning where self-adjusting generative models replace fixed ones and unlabeled data can potentially improve learning even when labeled data is only partially-observed. We model each class data by a mixture model and use a hierarchical Dirichlet process (HDP) to model observed as well as unobserved classes. We extend the standard HDP model to accommodate unlabeled samples and introduce a new sharing strategy, within the context of Gaussian mixture models, that restricts sharing with covariance matrices while leaving the mean vectors free. Our research is mainly driven by real-world applications with evolving data-generating mechanisms where obtaining a fully-observed labeled data set is impractical. We demonstrate the feasibility of the proposed approach for semi-supervised learning in two such applications.
Keywords :
Gaussian processes; covariance matrices; data models; learning (artificial intelligence); Gaussian mixture models; HDP; covariance matrices; data model; data-generating mechanisms; hierarchical Dirichlet process; mean vectors; partially observed settings; real-world applications; self-adjusting generative models; semisupervised learning; sharing strategy; standard HDP model; unlabeled data; unobserved classes; Context modeling; Covariance matrix; Data models; Gaussian mixture model; Semisupervised learning; Vectors; class discovery; gaussian mixture model; hierarchical dirichlet process; partially-observed data sets; semi-supervised learning;
Conference_Titel :
Data Mining (ICDM), 2012 IEEE 12th International Conference on
Conference_Location :
Brussels
Print_ISBN :
978-1-4673-4649-8
DOI :
10.1109/ICDM.2012.60