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Real Time Learning in Humanoids: A challenge for scalability of Online Algorithms

Sethu Vijayakumar, Stefan Schaal

Year
2000
Citations
11

Abstract

. While recent research in neural networks and statistical learning has focused mostly on learning from finite data sets without stringent constraints on computational efficiency, there is an increasing number of learning problems that require real-time performance from an essentially infinite stream of incrementally arriving data. This paper demonstrates how even high-dimensional learning problems of this kind can successfully be dealt with by techniques from nonparametric regression and locally weighted learning. As an example, we describe the application of one of the most advanced of such algorithms, Locally Weighted Projection Regression (LWPR), to the on-line learning of the inverse dynamics model of an actual seven degree-of-freedom anthropomorphic robot arm. LWPR's linear computational complexity in the number of input dimensions, its inherent mechanisms of local dimensionality reduction, and its sound learning rule basedon incremental stochastic leaveone -out cross va...

Keywords

Computer scienceArtificial intelligenceMachine learningInverse dynamicsCurse of dimensionalityStability (learning theory)AlgorithmOnline machine learningArtificial neural network

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