Lévy processes refer to a class of stochastic processes, for example, Poisson processes and Brownian motions, and play an important role in stochastic processes and machine learning. Therefore, it is essential to study risk bounds of the learning process for time-dependent samples drawn from a Lévy process (or briefly called learning process for Lévy process). It is noteworthy that samples in this learning process are not independently and identically distributed (i.i.d.). Therefore, results in traditional statistical learning theory are not applicable (or at least cannot be applied directly), because they are obtained under the sample-i.i.d. assumption. In this paper, we study risk bounds of the learning process for time-dependent samples ...
Using the Wiener–Hopf factorization, it is shown that it is possible to bound the path of an arbitra...
Abstract. This paper presents the first generalization bounds for time series prediction with a non-...
In this paper, we study the generalization bound for an empirical process of samples independently d...
Many existing results on statistical learning theory are based on the assumption that samples are in...
Many existing results on statistical learning theory are based on the assumption that samples are in...
In this work we study the learnability of stochastic processes with respect to the conditional risk,...
Statistical Learning Theory studies the problem of learning an unknown relationship between observed...
This letter investigates the supervised learning problem with observations drawn from certain genera...
This thesis is to study the expected difference of the continuous supremum and discrete maximum of a...
Learning theory has largely focused on two main learning scenarios: the classical statistical settin...
Using the Wiener–Hopf factorization, it is shown that it is possible to bound the path of an arbitra...
In this paper we show how to extract a hypothesis with small risk from the ensemble of hypotheses ge...
AbstractGeneralization performance is the main purpose of machine learning theoretical research. It ...
Learning algorithms play an ever increasing role in modern engineering solutions. However, despite m...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
Using the Wiener–Hopf factorization, it is shown that it is possible to bound the path of an arbitra...
Abstract. This paper presents the first generalization bounds for time series prediction with a non-...
In this paper, we study the generalization bound for an empirical process of samples independently d...
Many existing results on statistical learning theory are based on the assumption that samples are in...
Many existing results on statistical learning theory are based on the assumption that samples are in...
In this work we study the learnability of stochastic processes with respect to the conditional risk,...
Statistical Learning Theory studies the problem of learning an unknown relationship between observed...
This letter investigates the supervised learning problem with observations drawn from certain genera...
This thesis is to study the expected difference of the continuous supremum and discrete maximum of a...
Learning theory has largely focused on two main learning scenarios: the classical statistical settin...
Using the Wiener–Hopf factorization, it is shown that it is possible to bound the path of an arbitra...
In this paper we show how to extract a hypothesis with small risk from the ensemble of hypotheses ge...
AbstractGeneralization performance is the main purpose of machine learning theoretical research. It ...
Learning algorithms play an ever increasing role in modern engineering solutions. However, despite m...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
Using the Wiener–Hopf factorization, it is shown that it is possible to bound the path of an arbitra...
Abstract. This paper presents the first generalization bounds for time series prediction with a non-...
In this paper, we study the generalization bound for an empirical process of samples independently d...