作者
Sergio Ramírez‐Gallego, Iago Lastra, David Martínez‐Rego, Verónica Bolón‐Canedo, José Manuel Benítez, Francisco Herrera, Amparo Alonso‐Betanzos
发表日期
2017/2
期刊
International Journal of Intelligent Systems
卷号
32
期号
2
页码范围
134-152
简介
With the advent of large‐scale problems, feature selection has become a fundamental preprocessing step to reduce input dimensionality. The minimum‐redundancy‐maximum‐relevance (mRMR) selector is considered one of the most relevant methods for dimensionality reduction due to its high accuracy. However, it is a computationally expensive technique, sharply affected by the number of features. This paper presents fast‐mRMR, an extension of mRMR, which tries to overcome this computational burden. Associated with fast‐mRMR, we include a package with three implementations of this algorithm in several platforms, namely, CPU for sequential execution, GPU (graphics processing units) for parallel computing, and Apache Spark for distributed computing using big data technologies.
引用总数
2016201720182019202020212022202320241417322228242918
学术搜索中的文章
S Ramírez‐Gallego, I Lastra, D Martínez‐Rego… - International Journal of Intelligent Systems, 2017