RankSys / JavaFM
Java 8 Factorization Machines Library
☆26Updated 7 years ago
Related projects ⓘ
Alternatives and complementary repositories for JavaFM
- field-aware factorization machine implemented by java with an experiment using criteo data set.☆39Updated 9 years ago
- A SimRank algorithm implementation using Spark☆49Updated 10 years ago
- Bayesian Personalized Ranking for Spark☆40Updated 6 years ago
- libffm with ftrl updater☆93Updated 7 years ago
- Reactive Factorization Engine☆104Updated 9 years ago
- a large scale lbfgs using a method in nips 2014 paper "Large-scale L-BFGS using MapReduce".☆13Updated 9 years ago
- A Java implementation of LIBFFM: A Library for Field-aware Factorization Machines☆10Updated 2 years ago
- follow-the-regularized-leader implemented by java, with an example using criteo dataset.☆37Updated 9 years ago
- ☆78Updated 7 years ago
- Hybrid Linear UCB bandit learning algorithm L Li(2010) python code☆56Updated 8 years ago
- ☆20Updated 7 years ago
- Machine learning applied at large scale☆10Updated 8 years ago
- Criteo/Kaggle Competition of CTR prediction☆130Updated 10 years ago
- An implementation of GBDT+FM☆24Updated 7 years ago
- ☆28Updated 9 years ago
- Java port of the MyMediaLite recommender system library☆48Updated 8 years ago
- A framework to evaluate recommender system algorithms☆27Updated 6 years ago
- 基于Spark的LambdaMART实现☆11Updated 9 years ago
- Fork of https://sourceforge.net/p/lemur/code/HEAD/tree/RankLib/☆64Updated 8 years ago
- Factorization Machines on Spark and Glint☆25Updated 8 years ago
- Introduction and implementation of the strategies(include Thompson Sampling) for multi-armed bandit problem☆44Updated 6 years ago
- ☆40Updated 7 years ago
- Assembly of fundamental statistics implemented based on Apache Spark☆31Updated 8 years ago
- Java 8 Recommender Systems framework for novelty, diversity and much more☆273Updated 2 years ago
- A parallel implementation of factorization machines based on Spark☆73Updated 4 years ago
- Online Machine Learning Algorithms☆30Updated last year
- Implemented SVD, SVD++ and timeSVD++. Can be used on the Netflix data to make predictions/recommendations.☆14Updated 7 years ago