Extracting useful information from large-scale data is a major challenge in the era of big data. As an effective means of information filtering and data summarization, the subset selection method selects the most informative subset from large-scale data to represent the entire data set to reduce the size of the data that needs to be processed. In this thesis, a kind of dissimilarity-based semi-supervised subset selection method is proposed. To begin with, the subset selection problem is treated as an convex optimization process with regularization. Thus the wanted subset is modeled as an unknown sparse matrix, which non-zero rows represent the target set by the source set. Then alternating optimization method is used to solve the Lagrangian...
With the increasing data dimensionality, feature selection has become a fundamental task to deal wit...
In this paper, a supervised feature selection approach is presented, which is based on metric applie...
International audienceThis paper describes a three-level framework for semi-supervised feature selec...
Extracting useful information from large-scale data is a major challenge in the era of big data. As ...
Abstract—Feature subset selection, as a special case of the general subset selection problem, has be...
Abstract—In this paper, we develop robust methods for subset selection based on the minimization of ...
As data acquisition has become relatively easy and inexpensive, data sets are becoming extremely lar...
Detection of a signal under noise is a classical signal processing problem. When monitoring spatial ...
2011-07-29In this dissertation, we study the subset selection problem for prediction. It deals with ...
Abstract—Feature selection has been widely studied in the literature in both supervised and unsuperv...
International audienceIn this paper, we address the problem of semi-supervised feature selection fro...
The problem of selecting a subset of relevant features in a potentially overwhelming quantity of dat...
Explosive growth of multimedia data has brought challenge of how to efficiently browse, retrieve and...
Explosive growth of multimedia data has brought challenge of how to efficiently browse, retrieve and...
In recent years, the advance of information and communication technologies has allowed the storage a...
With the increasing data dimensionality, feature selection has become a fundamental task to deal wit...
In this paper, a supervised feature selection approach is presented, which is based on metric applie...
International audienceThis paper describes a three-level framework for semi-supervised feature selec...
Extracting useful information from large-scale data is a major challenge in the era of big data. As ...
Abstract—Feature subset selection, as a special case of the general subset selection problem, has be...
Abstract—In this paper, we develop robust methods for subset selection based on the minimization of ...
As data acquisition has become relatively easy and inexpensive, data sets are becoming extremely lar...
Detection of a signal under noise is a classical signal processing problem. When monitoring spatial ...
2011-07-29In this dissertation, we study the subset selection problem for prediction. It deals with ...
Abstract—Feature selection has been widely studied in the literature in both supervised and unsuperv...
International audienceIn this paper, we address the problem of semi-supervised feature selection fro...
The problem of selecting a subset of relevant features in a potentially overwhelming quantity of dat...
Explosive growth of multimedia data has brought challenge of how to efficiently browse, retrieve and...
Explosive growth of multimedia data has brought challenge of how to efficiently browse, retrieve and...
In recent years, the advance of information and communication technologies has allowed the storage a...
With the increasing data dimensionality, feature selection has become a fundamental task to deal wit...
In this paper, a supervised feature selection approach is presented, which is based on metric applie...
International audienceThis paper describes a three-level framework for semi-supervised feature selec...