Statistical estimation in many contemporary settings involves the acquisition, analysis, and aggregation of datasets from multiple sources, which can have significant differences in character and in value. Due to these variations, the effectiveness of employing a given resource – e.g., a sensing device or computing power – for gathering or processing data from a particular source depends on the nature of that source. As a result, the appropriate division and assignment of a collection of resources to a set of data sources can substantially impact the overall performance of an inferential strategy. In this expository article, we adopt a general view of the notion of a resource and its effect on the quality of a data source, and we describe a...
This is an overview of the material to be discussed in the invited keynote presentation by H. J. Sie...
Often scientific information on various data generating processes are presented in the from of numer...
Consider one observes n i.i.d. copies of a random variable with a probability distribution that is k...
Statistical estimation in many contemporary settings involves the acquisition, analysis, and aggrega...
This paper concerns the problem of optimally allocating scarce indivisible re-sources among a target...
Cet article propose l'utilisation de la méthode de l'Entropie Maximale Généralisée (GME) pour estime...
Classical statistics and machine learning posit that data are passively collected, usually assumed t...
When collecting data to select an alternative from a finite set of alternatives that are described b...
Abstract — This paper presents a framework for the theoret-ical analysis of Estimation of Distributi...
This paper concerns the problem of optimally allocating scarce indivisible re-sources among a target...
© 2015 A. Agarwal & S. Agarwal. We propose an optimum mechanism for providing monetary incentives ...
This chapter analyzes how valuable the assumption of systematic environment imbalance is for perform...
This paper presents a framework for the theoretical analysis of Estimation of Distribution Algorithm...
Selecting the best configuration of hyperparameter values for a Machine Learning model yields direct...
This study evaluates various resource allocation strategies for simultaneous estimation of two indep...
This is an overview of the material to be discussed in the invited keynote presentation by H. J. Sie...
Often scientific information on various data generating processes are presented in the from of numer...
Consider one observes n i.i.d. copies of a random variable with a probability distribution that is k...
Statistical estimation in many contemporary settings involves the acquisition, analysis, and aggrega...
This paper concerns the problem of optimally allocating scarce indivisible re-sources among a target...
Cet article propose l'utilisation de la méthode de l'Entropie Maximale Généralisée (GME) pour estime...
Classical statistics and machine learning posit that data are passively collected, usually assumed t...
When collecting data to select an alternative from a finite set of alternatives that are described b...
Abstract — This paper presents a framework for the theoret-ical analysis of Estimation of Distributi...
This paper concerns the problem of optimally allocating scarce indivisible re-sources among a target...
© 2015 A. Agarwal & S. Agarwal. We propose an optimum mechanism for providing monetary incentives ...
This chapter analyzes how valuable the assumption of systematic environment imbalance is for perform...
This paper presents a framework for the theoretical analysis of Estimation of Distribution Algorithm...
Selecting the best configuration of hyperparameter values for a Machine Learning model yields direct...
This study evaluates various resource allocation strategies for simultaneous estimation of two indep...
This is an overview of the material to be discussed in the invited keynote presentation by H. J. Sie...
Often scientific information on various data generating processes are presented in the from of numer...
Consider one observes n i.i.d. copies of a random variable with a probability distribution that is k...