diversification recommendation techniques survey

SocialLGN Light graph convolution network for social recommendation

[TOC] > [Liao J., Zhou W., Luo F., Wen J., Gao M., Li X. and Zeng J. SocialLGN: Light graph convolution network for social recommendation. Information ......

论文解读(SimGCL)《Are Graph Augmentations Necessary? Simple Graph Contrastive Learning for Recommendation》

Note:[ wechat:Y466551 | 可加勿骚扰,付费咨询 ] 论文信息 论文标题:Are Graph Augmentations Necessary? Simple Graph Contrastive Learning for Recommendation论文作者:Junliang Yu ......

论文解读(LightGCL)《LightGCL: Simple Yet Effective Graph Contrastive Learning for Recommendation》

Note:[ wechat:Y466551 | 可加勿骚扰,付费咨询 ] 论文信息 论文标题:LightGCL: Simple Yet Effective Graph Contrastive Learning for Recommendation论文作者:Cai, Xuheng and Huang, ......

HS-GCN Hamming Spatial Graph Convolutional Networks for Recommendation

[TOC] > [Liu H., Wei Y., Yin J. and Nie L. HS-GCN: Hamming spatial graph convolutional networks for recommendation. IEEE TKDE.](https://arxiv.org/pdf/ ......

Quantitative Approach of Management Science:(better decision making by using quantitative techniques)

Which is the use of **quantitative techniques to improve decision making**. Also known as _management science_. **Better decision making by using quan ......

Unified Conversational Recommendation Policy Learning via Graph-based Reinforcement Learning

图的作用: 图结构捕捉不同类型节点(即用户、项目和属性)之间丰富的关联信息,使我们能够发现协作用户对属性和项目的偏好。因此,我们可以利用图结构将推荐和对话组件有机地整合在一起,其中对话会话可以被视为在图中维护的节点序列,以动态地利用对话历史来预测下一轮的行动。 由四个主要组件组成:基于图的 MDP ......

[论文研读]空天地一体化(SAGIN)的网络安全_A_Survey_on_Space-Air-Ground-Sea_Integrated_Network_Security_in_6G

** 恢复内容开始 ** ## 空天地一体化(SAGIN)的网络安全 **目前关注的方面:** 集中在安全通信、入侵检测、侧通道攻击、GPS欺骗攻击、网络窃听、消息修改/注入等方面,有些侧重于分析现有的安全威胁[20]、[21],有些提出了他们的攻击方法[14]、[22],还有一些则更多地侧重于SA ......

粗读Multi-Task Recommendations with Reinforcement Learning

论文: Multi-Task Recommendations with Reinforcement Learning 地址: https://arxiv.org/abs/2302.03328 # 摘要 In recent years, Multi-task Learning (MTL) has yi ......

ReadPaper-Pulsar Survey

## 1. The Giant Metrewave Radio Telescope (GMRT) #####1, The GMRT High Resolution Southern Sky Survey for Pulsars and Transients. I. Survey Descriptio ......
ReadPaper-Pulsar ReadPaper Pulsar Survey

MEANTIME Mixture of Attention Mechanisms with Multi-temporal Embeddings for Sequential Recommendation

[TOC] > [Cho S., Park E. and Yoo S. MEANTIME: Mixture of attention mechanisms with multi-temporal embeddings for sequential recommendation. RecSys, 20 ......

The Deep Learning Compiler: A Comprehensive Survey

The Deep Learning Compiler: A Comprehensive Survey - [AI编译器综述](#ai编译器综述) - [摘要](#摘要) - [介绍](#介绍) - [背景](#背景) - [深度学习框架](#深度学习框架) - [深度学习硬件](#深度学习硬件) - ......
Comprehensive Compiler Learning Survey Deep

Memory Augmented Graph Neural Networks for Sequential Recommendation

[TOC] > [Ma C., Ma L., Zhang Y., Sun J., Liu X. and Coates M. Memory augmented graph neural networks for sequential recommendation. AAAI, 2021.](http: ......

关于Deep Neural Networks for YouTube Recommendations的一些思考和实现

作者自己实现该文章的时候遇到的一些值得思考的地方: - [关于Deep Neural Networks for YouTube Recommendations的一些思考和实现](https://cloud.tencent.com/developer/article/1170340) - [备份网址] ......
Recommendations Networks YouTube Neural Deep

Graph Masked Autoencoder for Sequential Recommendation

[TOC] > [Ye Y., Xia L. and Huang C. Graph masked autoencoder for sequential recommendation. SIGIR, 2023.](http://arxiv.org/abs/2305.04619) ## 概 图 + MA ......

混合性对话:Towards Conversational Recommendation over Multi-Type Dialogs

## 混合型对话 传统的人机对话研究专注于单一类型的对话,并且往往预设用户一开始就清楚对话目标。但实际应用中,人机对话常常混合了多种类型,例如闲聊、任务导向对话、推荐对话、问答等,并且用户目标是未知的。在这样的混合型对话中,机器人需要主动自然地进行对话推荐。 “混合型对话”这个新颖的任务于2020年 ......

Time Interval Aware Self-Attention for Sequential Recommendation

[TOC] > [Li J., Wang Y., McAuley J. Time interval aware self-attention for sequential recommendation. WSDM, 2020.](https://dl.acm.org/doi/10.1145/3336 ......

An Introduction to Linux Automation, Tools and Techniques

An Introduction to Linux Automation, Tools and Techniques https://linuxconfig.org/an-introduction-to-linux-automation-tools-and-techniques In the fast ......

Exploiting Positional Information for Session-based Recommendation

[TOC] > [Qiu R., Huang Z., Chen T. and Yin H. Exploiting positional information for session-based recommendation. ACM Transactions on Information Syst ......

Contrastive Learning for Representation Degeneration Problem in Sequential Recommendation

[TOC] > [Qiu R., Huang Z., Ying H. and Wang Z. Contrastive learning for representation degeneration problem in sequential recommendation. WSDM, 2022.] ......

Self-Supervised Hypergraph Convolutional Networks for Session-based Recommendation

[TOC] > [Xia X., Yin H., Yu J., Wang Q., Cui L and Zhang X. Self-supervised hypergraph convolutional networks for session-based recommendation. AAAI, ......

Self-Supervised Graph Co-Training for Session-based Recommendation

[TOC] > [Xia X., Yin H., Yu J., Shao Y. and Cui L. Self-supervised graph co-training for session-based recommendation. CIKM, 2021.](http://arxiv.org/a ......

Global Context Enhanced Graph Neural Networks for Session-based Recommendation

[TOC] > [Wang Z., Wei W., Cong G., Li X., Mao X. and Qiu M. Global context enhanced graph neural networks for session-based recommendation. SIGIR, 202 ......

Neural Attentive Session-based Recommendation

[TOC] >[ Li J., Ren P., Chen Z., Ren Z., Lian T. and Ma J. Neural attentive session-based recommendation. CIKM, 2017.](http://arxiv.org/abs/1711.04725 ......

事件抽取论文综述-A Survey on Deep Learning Event Extraction: Approaches and Applications

A Survey on Deep Learning Event Extraction: Approaches and Applications 1)发表信息: https://arxiv.org/abs/2107.02126 Qian Li, Jianxin Li, Member, IEEE, Ji ......

Memory Priority Model for Session-based Recommendation

[TOC] > [Liu Q., Zeng Y., Mokhosi R. and Zhang H. STAMP: Short-term attention/memory priority model for session-based recommendation. KDD, 2018.](http ......

论文解析 -- A Survey of Large Language Models

什么是语言模型?生成式,完成语言接龙或填空 Technically, language modeling (LM) is one of the major approaches to advancing language intelligence of machines. In general, L ......
Language Survey Models 论文 Large

【图像数据增强】Image Data Augmentation for Deep Learning: A Survey

| 原始题目 | Image Data Augmentation for Deep Learning: A Survey | | | | | 中文名称 | 深度学习的图像数据增强:综述 | | 发表时间 | 2022年4月19日 | | 平台 | arXiv | | 来源 | 南京大学 | | 文章 ......
Augmentation Learning 图像 数据 Survey

Personalized Top-N Sequential Recommendation via Convolutional Sequence Embedding

Tang J. and Wang K. Personalized top-n sequential recommendation via convolutional sequence embedding. WSDM, 2018. 概 序列推荐的经典之作, 将卷积用在序列推荐之上. 符号说明 $\ma ......

Handling Information Loss of Graph Neural Networks for Session-based Recommendation

Chen T. and Wong R. C. Handling information loss of graph neural networks for session-based recommendation. KDD, 2020. 概 作者发现图用在 Session 推荐中存在: lossy ......

解决 c3p0报错 Establishing SSL connection without server's identity verification is not recommended

解决 c3p0报错 Establishing SSL connection without server's identity verification is not recommended ?useSSL=false <c3p0-config> <default-config> <property ......
共107篇  :3/4页 首页上一页3下一页尾页