Sergio Ramírez (@sramirez)
  • Stars
    star
    287
  • Global Rank 92,325 (Top 4 %)
  • Followers 75
  • Following 51
  • Registered about 14 years ago
  • Most used languages
    Java
    54.5 %
    Scala
    27.3 %
    C++
    9.1 %
    R
    9.1 %
  • Location 🇪🇸 Spain
  • Country Total Rank 1,088
  • Country Ranking
    Scala
    10
    C++
    169
    R
    465
    Java
    603

Top repositories

1

spark-infotheoretic-feature-selection

This package contains a generic implementation of greedy Information Theoretic Feature Selection (FS) methods. The implementation is based on the common theoretic framework presented by Gavin Brown. Implementations of mRMR, InfoGain, JMI and other commonly used FS filters are provided.
Scala
135
star
2

fast-mRMR

An improved implementation of the classical feature selection method: minimum Redundancy and Maximum Relevance (mRMR).
C++
83
star
3

spark-MDLP-discretization

Spark implementation of Fayyad's discretizer based on Minimum Description Length Principle (MDLP)
Scala
44
star
4

MOAReduction

A library for data reduction in MOA (Massive Online Analysis) platform.
Java
10
star
5

spark-RELIEFFC-fselection

Distributed version of RELIEF-F algorithm for Apache Spark.
Scala
3
star
6

spark-IS-streaming

A Nearest Neighbor Classifier for High-Speed Big Data Streams with Instance Selection
Java
3
star
7

Gettting-and-Cleaning-Data

R
1
star
8

spark-experiments

Java
1
star
9

spark-DEMD-discretizer

An Entropy Multivariate Discretizer for data reduction on Spark
Java
1
star
10

EMD-discretizer

EMD is an evolutionary-based discretization algorithm with binary representation which selects the most adequate combination of boundary cut points to create discrete intervals.
Java
1
star
11

flink-infotheoretic-feature-selection

This package contains a generic implementation of greedy Information Theoretic Feature Selection (FS) methods for Apache Flink. The implementation is based on the common theoretic framework presented by Gavin Brown. Implementations of mRMR, InfoGain, JMI and other commonly used FS filters are provided.
Java
1
star