Current structure learning practices in Bayesian networks have been developed to learn the structure between observable variables and learning latent parameters independently. One exception establishes a variant of EM for learning the structure of Bayesian networks in the presence of incomplete data [1]. However, no method has demonstrated learning the influence structure between latent variables that describe (or are learned from) a number of observations. We present a method that learns a set of naive Bayes models (NBMs) independently given a partitioned set of observations, and then attempts to track the high-level influence structure between every NBM. The latent parameters of each model are then relearned to fine-tune the influence distribution between models for density estimation of new observations. Experimental results are provided which demonstrate the effectiveness of our non-parametric method. Applications of this method include knowledge discovery and density estimation in situations where we do not fully observe characteristics of the environment.
Reference:
Ajoodha, R. and Rosman, B.S. 2017. Tracking influence between naive Bayes models using score-based structure learning. 2017 Pattern Recognition Association of South Africa and Robotics and Mechatronics International Conference (PRASA-RobMech), 29 November - 1 December 2017, Central University of Technology, Bloemfontein, Free State, South Africa
Ajoodha, R., & Rosman, B. S. (2017). Tracking influence between naive Bayes models using score-based structure learning. IEEE. http://hdl.handle.net/10204/9890
Ajoodha, R, and Benjamin S Rosman. "Tracking influence between naive Bayes models using score-based structure learning." (2017): http://hdl.handle.net/10204/9890
Ajoodha R, Rosman BS, Tracking influence between naive Bayes models using score-based structure learning; IEEE; 2017. http://hdl.handle.net/10204/9890 .
Paper presented at the 2017 Pattern Recognition Association of South Africa and Robotics and Mechatronics International Conference (PRASA-RobMech), 29 November - 1 December 2017, Central University of Technology, Bloemfontein, Free State, South Africa. This is the accepted version of the paper.