Title :
Incremental Hierarchical Discriminant Regression
Author :
Weng, Juyang John ; Hwang, Wey-Shiuan
Author_Institution :
Dept. of Comput. Sci. & Eng., Michigan State Univ.
fDate :
3/1/2007 12:00:00 AM
Abstract :
This paper presents incremental hierarchical discriminant regression (IHDR) which incrementally builds a decision tree or regression tree for very high-dimensional regression or decision spaces by an online, real-time learning system. Biologically motivated, it is an approximate computational model for automatic development of associative cortex, with both bottom-up sensory inputs and top-down motor projections. At each internal node of the IHDR tree, information in the output space is used to automatically derive the local subspace spanned by the most discriminating features. Embedded in the tree is a hierarchical probability distribution model used to prune very unlikely cases during the search. The number of parameters in the coarse-to-fine approximation is dynamic and data-driven, enabling the IHDR tree to automatically fit data with unknown distribution shapes (thus, it is difficult to select the number of parameters up front). The IHDR tree dynamically assigns long-term memory to avoid the loss-of-memory problem typical with a global-fitting learning algorithm for neural networks. A major challenge for an incrementally built tree is that the number of samples varies arbitrarily during the construction process. An incrementally updated probability model, called sample-size-dependent negative-log-likelihood (SDNLL) metric is used to deal with large sample-size cases, small sample-size cases, and unbalanced sample-size cases, measured among different internal nodes of the IHDR tree. We report experimental results for four types of data: synthetic data to visualize the behavior of the algorithms, large face image data, continuous video stream from robot navigation, and publicly available data sets that use human defined features
Keywords :
decision trees; learning (artificial intelligence); neural nets; regression analysis; statistical distributions; decision tree; global fitting learning algorithm; hierarchical probability distribution; incremental hierarchical discriminant regression; neural networks; real-time learning system; regression tree; sample size dependent negative log likelihood; Biological system modeling; Biology computing; Brain modeling; Computational modeling; Decision trees; Learning systems; Probability distribution; Real time systems; Regression tree analysis; Shape; Autonomous development; classification; cortical development; decision trees; discriminant analysis; high-dimensional data; incremental learning; local invariance; online learning; plasticity; regression; Algorithms; Artificial Intelligence; Biometry; Discriminant Analysis; Face; Humans; Information Storage and Retrieval; Neural Networks (Computer); Pattern Recognition, Automated; Regression Analysis;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2006.889942