AbstractWe consider a coefficient-based regularized regression in a data dependent hypothesis space. For a given set of samples, functions in this hypothesis space are defined to be linear combinations of basis functions generated by a kernel function and sample data. We do not need the kernel to be symmetric or positive semi-definite, which provides flexibility and adaptivity for the learning algorithm. Another advantage of this algorithm is that, it is computationally effective without any optimization processes. In this paper, we apply concentration techniques with ℓ2-empirical covering numbers to present an elaborate capacity dependent analysis for the algorithm, which yields shaper estimates in both confidence estimation and convergenc...
In recent years, functional linear models have attracted growing attention in statistics and machine...
In this paper, we study regression problems over a separable Hilbert space with the square loss, cov...
We consider a learning algorithm generated by a regularization scheme with a concave regularizer for...
AbstractWe consider the regression problem by learning with a regularization scheme in a data depend...
AbstractWe consider a coefficient-based regularized regression in a data dependent hypothesis space....
AbstractMany learning algorithms use hypothesis spaces which are trained from samples, but little th...
Under mild assumptions on the kernel, we obtain the best known error rates in a regularized learning...
AbstractA learning algorithm for regression is studied. It is a modified kernel projection machine (...
We develop some new error bounds for learning algorithms induced by regularization methods in the re...
We investigate machine learning for the least square regression with data dependent hypothesis and c...
AbstractA standard assumption in theoretical study of learning algorithms for regression is uniform ...
We consider learning algorithms induced by regularization methods in the regression setting. We sho...
AbstractLearning from data with generalization capability is studied in the framework of minimizatio...
AbstractIn this paper, we investigate the generalization performance of a regularized ranking algori...
AbstractBy the aid of the properties of the square root of positive operators we refine the consiste...
In recent years, functional linear models have attracted growing attention in statistics and machine...
In this paper, we study regression problems over a separable Hilbert space with the square loss, cov...
We consider a learning algorithm generated by a regularization scheme with a concave regularizer for...
AbstractWe consider the regression problem by learning with a regularization scheme in a data depend...
AbstractWe consider a coefficient-based regularized regression in a data dependent hypothesis space....
AbstractMany learning algorithms use hypothesis spaces which are trained from samples, but little th...
Under mild assumptions on the kernel, we obtain the best known error rates in a regularized learning...
AbstractA learning algorithm for regression is studied. It is a modified kernel projection machine (...
We develop some new error bounds for learning algorithms induced by regularization methods in the re...
We investigate machine learning for the least square regression with data dependent hypothesis and c...
AbstractA standard assumption in theoretical study of learning algorithms for regression is uniform ...
We consider learning algorithms induced by regularization methods in the regression setting. We sho...
AbstractLearning from data with generalization capability is studied in the framework of minimizatio...
AbstractIn this paper, we investigate the generalization performance of a regularized ranking algori...
AbstractBy the aid of the properties of the square root of positive operators we refine the consiste...
In recent years, functional linear models have attracted growing attention in statistics and machine...
In this paper, we study regression problems over a separable Hilbert space with the square loss, cov...
We consider a learning algorithm generated by a regularization scheme with a concave regularizer for...