We introduce a constructive, incremental learning system for regression problems that models data by means of locally linear experts. In contrast to other approaches, the experts are trained independently and do not compete for data during learning. Only when a prediction for a query is required do the experts cooperate by blending their individual predic-tions. Each expert is trained by minimizing a penalized local cross vali-dation error using second order methods. In this way, an expert is able to find a local distance metric by adjusting the size and shape of the recep-tive field in which its predictions are valid, and also to detect relevant in-put features by adjusting its bias on the importance of individual input dimensions. We deri...
To cope with varying conditions, motor primitives (MPs) must support generalization over task parame...
This thesis consists of four papers that study several topics related to expert evaluation and aggre...
Locally weighted projection regression (LWPR) is a new algorithm for incremental nonlinear function ...
In this paper we describe a divide-andcombine strategy for decomposition of a complex prediction pr...
A useful strategy to deal with complex classification scenarios is the “divide and conquer ” approac...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
Locally weighted projection regression is a new algorithm that achieves nonlinear function approxima...
This work presents two novel approaches to determine optimum growing multi-experts network (GMN) str...
In this paper, we examine on-line learning problems in which the target concept is allowed to change...
A useful strategy to deal with complex classification scenarios is the “divide and con-quer ” approa...
We introduce a new protocol for prediction with expert advice in which each expert evaluates the lea...
We introduce a new protocol for prediction with expert advice in which each expert evaluates the lea...
Abstract. A new connectionist model for the solution of piecewise linear regression problems is intr...
Recent research suggests that combining AI models with a human expert can exceed the performance of ...
Prediction in a small-sized sample with a large number of covariates, the “small n, large p” problem...
To cope with varying conditions, motor primitives (MPs) must support generalization over task parame...
This thesis consists of four papers that study several topics related to expert evaluation and aggre...
Locally weighted projection regression (LWPR) is a new algorithm for incremental nonlinear function ...
In this paper we describe a divide-andcombine strategy for decomposition of a complex prediction pr...
A useful strategy to deal with complex classification scenarios is the “divide and conquer ” approac...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
Locally weighted projection regression is a new algorithm that achieves nonlinear function approxima...
This work presents two novel approaches to determine optimum growing multi-experts network (GMN) str...
In this paper, we examine on-line learning problems in which the target concept is allowed to change...
A useful strategy to deal with complex classification scenarios is the “divide and con-quer ” approa...
We introduce a new protocol for prediction with expert advice in which each expert evaluates the lea...
We introduce a new protocol for prediction with expert advice in which each expert evaluates the lea...
Abstract. A new connectionist model for the solution of piecewise linear regression problems is intr...
Recent research suggests that combining AI models with a human expert can exceed the performance of ...
Prediction in a small-sized sample with a large number of covariates, the “small n, large p” problem...
To cope with varying conditions, motor primitives (MPs) must support generalization over task parame...
This thesis consists of four papers that study several topics related to expert evaluation and aggre...
Locally weighted projection regression (LWPR) is a new algorithm for incremental nonlinear function ...