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Combining Regression Trees and Radial Basis Function Networks paper by: M. Orr, J. Hallam, K. Takezawa, A. Murray, S. Ninomiya, M. Oide, T. Leonard presentation.

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Presentation on theme: "Combining Regression Trees and Radial Basis Function Networks paper by: M. Orr, J. Hallam, K. Takezawa, A. Murray, S. Ninomiya, M. Oide, T. Leonard presentation."— Presentation transcript:

1 Combining Regression Trees and Radial Basis Function Networks paper by: M. Orr, J. Hallam, K. Takezawa, A. Murray, S. Ninomiya, M. Oide, T. Leonard presentation by: Vladimir Vacić

2 Contents: Regression Trees Radial Basis Function Neural Networks Combining RTs and RBF NNs Method Experimental Results Conclusion

3 X ik <b S L S R Regression Trees b

4 Radial Basis Function Neural Networks

5 Combining RTs and RBF NNs RT generates candidate units for the RBF NN RT specifies RBF centers and radii RT influences the order in which candidate units are evaluated

6 Method Generating the regression tree: recursively cut along the k dimensions determine output for each node

7 Method Transforming tree nodes in RBFs: center radius

8 Method Selecting RBF units from the set of candidates: necessary because so far we have not performed any pruning of the regression tree too complex of a RBF runs into a risk of over-fitting complex RBF is computationally expensive

9 Method Selecting RBF units from the set of candidates: standard selection methods are forward selection, backward elimination, combination of the two, full combinatorial search… problem with forward selection is that once choice may block subsequent informative choices

10 Method Using the trees to guide selection: put the root node into the list of active nodes for each node, consider the effect of adding one or both children and keeping or removing the parent choose the combination which improves performance the most and update the active list repeat

11 Method Calculating the weights: least square minimization

12 Method Model selection criterion: Bayesian information criterion (BIC) BIC imposes a penalty for model complexity and hence leads to smaller networks

13 Method Note that so far we have had 2 free parameters : p (controls the resulting network size)  (controls the ratio of the RBF radii to corresponding hyper-rectangle size)

14 Experimental Results the authors report that the best experimentally determined p and  on the training set do not always yield best performance on the test set instead, they suggest using a set of best values for p and  from training and then find the best combination on the test set

15 Experimental Results 2D sine wave problem simulated circuit problem

16 Experimental Results Comparison with other learning methods: linear least squares regression k-nearest neighbor ensembles of multilayer perceptrons multilayer perceptrons trained using MCMC multivariate adaptive regression splines (MARS) with bagging

17 Experimental Results Datasets: DELVE dataset (non-linear, nigh noise, 8- and 32-dimensional examples), generated from simulated robotic arms soybean classification into three classes (good, fair, poor) from digital images

18 Experimental Results DELVE, 8-dimensional examples:

19 Experimental Results DELVE, 32-dimensional examples:

20 Conclusion improvement and analysis of previous work by Kubat combining RTs and RBF NNs as a technique is competitive with some leading modern methods

21 Combining Regression Trees and Radial Basis Function Networks paper by: M. Orr, J. Hallam, K. Takezawa, A. Murray, S. Ninomiya, M. Oide, T. Leonard presentation by: Vladimir Vacić


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