zoukankan      html  css  js  c++  java
  • DLRS(近三年深度学习应用于推荐系统论文汇总)

    Recommender Systems with Deep Learning
    
    Improving Scalability of Personalized Recommendation Systems for Enterprise Knowledge Workers
    – Authors: C Verma, M Hart, S Bhatkar, A Parker (2016)
    Multi-modal learning for video recommendation based on mobile application usage
    – Authors: X Jia, A Wang, X Li, G Xun, W Xu, A Zhang (2016)
    Collaborative Filtering with Stacked Denoising AutoEncoders and Sparse Inputs
    – Authors: F Strub, J Mary (2016)
    Applying Visual User Interest Profiles for Recommendation and Personalisation
    – Authors: J Zhou, R Albatal, C Gurrin (2016)
    Comparative Deep Learning of Hybrid Representations for Image Recommendations
    – Authors: C Lei, D Liu, W Li, Zj Zha, H Li (2016)
    Tag-Aware Recommender Systems Based on Deep Neural Networks
    – Authors: Y Zuo, J Zeng, M Gong, L Jiao (2016)
    Quote Recommendation in Dialogue using Deep Neural Network
    – Authors: H Lee, Y Ahn, H Lee, S Ha, S Lee (2016)
    Toward Fashion-Brand Recommendation Systems Using Deep-Learning: Preliminary Analysis
    – Authors: Y Wakita, K Oku, K Kawagoe (2016)
    Word embedding based retrieval model for similar cases recommendation
    – Authors: Y Zhao, J Wang, F Wang (2016)
    ConTagNet: Exploiting User Context for Image Tag Recommendation
    – Authors: Ys Rawat, Ms Kankanhalli (2016)
    Wide & Deep Learning for Recommender Systems
    – Authors: Ht Cheng, L Koc, J Harmsen, T Shaked, T Chandra… (2016)
    On Deep Learning for Trust-Aware Recommendations in Social Networks.
    – Authors: S Deng, L Huang, G Xu, X Wu, Z Wu (2016)
    A Survey and Critique of Deep Learning on Recommender Systems
    – Authors: L Zheng (2016)
    Collaborative Filtering and Deep Learning Based Hybrid Recommendation for Cold Start Problem
    – Authors: J Wei, J He, K Chen, Y Zhou, Z Tang (2016)
    Collaborative Filtering and Deep Learning Based Recommendation System For Cold Start Items
    – Authors: J Wei, J He, K Chen, Y Zhou, Z Tang (2016)
    Deep Neural Networks for YouTube Recommendations
    – Authors: P Covington, J Adams, E Sargin (2016)
    Towards Latent Context-Aware Recommendation Systems
    – Authors: M Unger, A Bar, B Shapira, L Rokach (2016)
    Automatic Recommendation Technology for Learning Resources with Convolutional Neural Network
    – Authors: X Shen, B Yi, Z Zhang, J Shu, H Liu (2016)
    Tag-Aware Personalized Recommendation Using a Deep-Semantic Similarity Model with Negative Sampling
    – Authors: Z Xu, C Chen, T Lukasiewicz, Y Miao, X Meng (2016)
    Latent Factor Representations for Cold-Start Video Recommendation
    – Authors: S Roy, Sc Guntuku (2016)
    Convolutional Matrix Factorization for Document Context-Aware Recommendation
    – Authors: D Kim, C Park, J Oh, S Lee, H Yu (2016)
    Conversational Recommendation System with Unsupervised Learning
    – Authors: Y Sun, Y Zhang, Y Chen, R Jin (2016)
    RecSys’ 16 Workshop on Deep Learning for Recommender Systems (DLRS)
    – Authors: A Karatzoglou, B Hidasi, D Tikk, O Sar (2016, Workshop proceedings)
    Ask the GRU: Multi-task Learning for Deep Text Recommendations
    – Authors: T Bansal, D Belanger, A Mccallum (2016)
    Recurrent Coevolutionary Latent Feature Processes for Continuous-Time Recommendation
    – Authors: H Dai, Y Wang, R Trivedi, L Song (2016)
    Keynote: Deep learning for audio-based music recommendation
    – Authors: S Dieleman (2016)
    Tumblr Blog Recommendation with Boosted Inductive Matrix Completion
    – Authors: D Shin, S Cetintas, Kc Lee, Is Dhillon (2015)
    Deep Collaborative Filtering via Marginalized Denoising Auto-encoder
    – Authors: S Li, J Kawale, Y Fu (2015)
    Learning Image and User Features for Recommendation in Social Networks
    – Authors: X Geng, H Zhang, J Bian, Ts Chua (2015)
    UCT-Enhanced Deep Convolutional Neural Network for Move Recommendation in Go
    – Authors: S Paisarnsrisomsuk (2015)
    A Multi-View Deep Learning Approach for Cross Domain User Modeling in Recommendation Systems
    – Authors: A Elkahky, Y Song, X He (2015)
    It Takes Two to Tango: An Exploration of Domain Pairs for Cross-Domain Collaborative Filtering
    – Authors: S Sahebi, P Brusilovsky (2015)
    Latent Context-Aware Recommender Systems
    – Authors: M Unger (2015)
    Learning Distributed Representations from Reviews for Collaborative Filtering
    – Authors: A Almahairi, K Kastner, K Cho, A Courville (2015)
    A Collaborative Filtering Approach to Real-Time Hand Pose Estimation
    – Authors: C Choi, A Sinha, Jh Choi, S Jang, K Ramani (2015)
    Collaborative Deep Learning for Recommender Systems
    – Authors: H Wang, N Wang, Dy Yeung (2014)
    CARS2: Learning Context-aware Representations for Context-aware Recommendations
    – Authors: Y Shi, A Karatzoglou, L Baltrunas, M Larson, A Hanjalic (2014)
    Relational Stacked Denoising Autoencoder for Tag Recommendation
    – Authors: H Wang, X Shi, Dy Yeung (2014)
  • 相关阅读:
    JavaWeb:JSP标准标签库
    SpringMVC:学习笔记(6)——转换器和格式化
    SpringMVC:学习笔记(5)——数据绑定及表单标签
    SpringMVC:学习笔记(1)——理解MVC及快速入门
    SpringMVC:学习笔记(4)——处理模型数据
    SpringMVC:学习笔记(2)——RequestMapping及请求映射
    SpringMVC:学习笔记(3)——REST
    Spring MVC中使用Swagger生成API文档和完整项目示例Demo,swagger-server-api
    Spring MVC中使用Swagger生成API文档和完整项目示例Demo,swagger-server-api
    隆中对,程序员修炼之道,技术学习前进之路
  • 原文地址:https://www.cnblogs.com/suanec/p/6640815.html
Copyright © 2011-2022 走看看