Logistic Regression using gradient descent. Works well with continuous data. Added a generic code for Cross validation as well.
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Updated
Dec 15, 2015 - Java
Logistic Regression using gradient descent. Works well with continuous data. Added a generic code for Cross validation as well.
My java implementation of scalable on-line stochastic gradient descent for regularized logistic regression
Implemented supervised classification such as Naïve Bayes and Logistic Regression techniques on Twitter data from the US Presidential Elections and categorized them into positive and negative tweets after pre-processing it
NBSVM using SGD for fast processing of large datasets
Learn Logistic Regression and implement by Java, also used to solve Kaggle-Titanic predict。
Implementation of Logistic Regression classifier model to determine HAM and SPAM emails
library to regression Machine Learning algorithm
基于50万亚马逊美食评论数据集的评论分类系统 Review classification system based on 500 thousand Amazon gourmet review data
Introduction to Machine Learning: Machine Problems and Assignments
Logistic Regression Predictor and Classifier Plugins
Naive Bayes classifier and Logistic Regression classifier to predict whether a transaction is fraudulent or not
Learn Neural Networks using Java
Email Spam Detection using Java and Apache Spark MLib
This little piece of Java program implements logistic regression to identify two distinct users. This was produced in order to show that we can use keyboard typing dynamics as a biometric authentication scheme.
Implementation of logistic-regression (as well as with a bias term and L2 regularized) in java
Image Encryption Using Arnold Cat Map, Logistic Map, and Selective Technique.
A comparison of machine learning algorithms: Naive Bayes vs Logistic Regression. Created at Stanford University, by Pablo Rodriguez Bertorello
Implementation of Naive Bayes and Logistic Regression Algorithms for Assignment 02 in the course CS6375: Machine Learning.
Java program to detect spam emails using Spark MLib & Logistic Regression
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