RiVal recommender system evaluation toolkit
-
Updated
Jan 30, 2019 - Java
RiVal recommender system evaluation toolkit
🏷️ An e-commerce marketplace template. An online auction and shopping website for buying and selling a wide variety of goods and services worldwide.
Personalized real-time movie recommendation system
基于 Spark Streaming 的电影推荐系统
A simple movie recommendation api using apache mahout machine learning library.
Mining and Utilizing Dataset Relevancy from Oceanographic Datasets to Improve Data Discovery and Access, online demo: https://mudrod.jpl.nasa.gov/#/
Recommendation engine in Java. Based on an ALS algorithm (Apache Spark). Train a new model after N seconds.
This is a personalization-based event recommendation systems for event search.
基于 Spark 的微服务推荐系统
A JavaFX music recommendation app that uses the Spotify API to create playlists.
🏠 DBsSA: Digital British-style student apartments, Stand-alone Deploy Version. (英式学生公寓数字化服务,单机部署版)
A Hybrid Recommendation model based on sentiment analysis on tweets and item based filtering to closely match preferred recommendation.
Movie / Film recommendation system built using Java utilizing knowledge graph technology.
Intellij plugin development to source-code recommendation
Book Recommendation Service
This project is an Android mobile application, written in Java programming language and implements a Recommender System using the k-Nearest Neighbors Algorithm. In this way the algorithm predicts the possible ratings of the users according to scores that have already been submitted to the system.
A Java console application that implements the factionality of the knn algorithm to find the similarity between a new user with only a few non zero ratings of some locations, find the k nearest neighbors through similarity score and then predict the ratings of the new user for the non rated locations.
Movie Recommendations like Netflix, Amezon Prime
Shopping-buster app powered by Content Based Recommendation engine.
Add a description, image, and links to the recommendation-system topic page so that developers can more easily learn about it.
To associate your repository with the recommendation-system topic, visit your repo's landing page and select "manage topics."