Nowadays, with emerge the multi-label datasets, the multi-label learning processes attracted interest and increasingly applied to different fields. In such learning processes, unlike single …
In this paper, for the first time, a feature selection procedure is modeled as a multi-criteria decision making (MCDM) process. This method is applied to a multi-label data and we have …
For the first time, the ensemble feature selection is modeled as a Multi-Criteria Decision- Making (MCDM) process in this paper. For this purpose, we used the VIKOR method as a …
In recent years, multi-label learning becomes a trending topic in machine learning and data mining. This type of learning deals with data that each instance is associated with more than …
In multi-label data, each instance corresponds to a set of labels instead of one label whereby the instances belonging to a label in the corresponding column of that label are …
Multi-label learning algorithms have significant challenges due to high-dimensional feature space and noises in multi-label datasets. Feature selection methods are effective techniques …
This paper proposed a Multi-Criteria Decision-Making (MCDM) modeling to deal with multi- target regression problem. This model offered a feature ranking approach for multi-target …
In this paper, ensemble feature selection is modeled as a bi-objective optimization problem regarding features' relevancy and redundancy degree. The proposed method, which is …
Many real-world data have multiple class labels known as multi-label data, where the labels are correlated with each other, and as such, they are not independent. Since these data are …