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Search results for deep learning factorization machines
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factorization-machines
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17 search results found
Deepctr
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7,181
Easy-to-use,Modular and Extendible package of deep-learning based CTR models .
Paddlerec
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3,992
Recommendation Algorithm大规模推荐算法库,包含推荐系统经典及最新算法LR、Wide&Deep、DSSM、T MAML、xDeepFM、DeepFEFM、NFM、AFM、RALM、DMR、GateNet、NAM Crossing、PNN、BST、AutoInt、FGCNN、FLEN、Fibinet、ListWi 、movielens等
Ad Papers
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3,009
Papers on Computational Advertising
Deepmatch
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1,906
A deep matching model library for recommendations & advertising. It's easy to train models and to export representation vectors which can be used for ANN search.
Sparrowrecsys
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1,634
A Deep Learning Recommender System
Tensorflow Deepfm
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1,452
Tensorflow implementation of DeepFM for CTR prediction.
Deeprec
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1,068
An Open-source Toolkit for Deep Learning based Recommendation with Tensorflow.
Deeptables
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634
DeepTables: Deep-learning Toolkit for Tabular data
Lightctr
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599
Lightweight and Scalable framework that combines mainstream algorithms of Click-Through-Rate prediction based computational DAG, philosophy of Parameter Server and Ring-AllReduce collective communication.
Deep Ctr Prediction
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389
CTR prediction models based on deep learning(基于深度学习的广告推荐CTR预估模型)
Neural_factorization_machine
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372
TenforFlow Implementation of Neural Factorization Machine
Openlearning4deeprecsys
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364
Some deep learning based recsys for open learning.
Attentional_factorization_machine
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316
TensorFlow Implementation of Attentional Factorization Machine
Recommend System Tf2.0
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262
原理解析及代码实战,推荐算法也可以很简单 🔥 想要系统的学习推荐算法的小伙伴,欢迎 Star 或者 Fork 到自己仓库进行学习🚀 有任何疑问欢迎提 Issues,也可加文末的联系方式向我询问!
Ctr
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253
CTR模型代码和学习笔记总结
Tensorflow Xnn
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241
Tensorflow implementation of DeepFM variant that won 4th Place in Mercari Price Suggestion Challenge on Kaggle.
Recstudio
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153
A highly-modularized and recommendation-efficient recommendation library based on PyTorch.
Fwumious_wabbit
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128
Fwumious Wabbit, fast on-line machine learning toolkit written in Rust
Deeplight_deep Lightweight Feature Interactions
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63
Accelerating Inference for Recommendation Systems (WSDM'21)
Ctr Prediction
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56
Sharing the CTR Prediction original paper and personal study notes
Attentional Neural Factorization Machine
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37
Attention,Factorization Machine, Deep Learning, Recommender System
Tensorflow In Practice
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33
Code based in TensorFlow
Recommender Tensorflow
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33
Recommendation Models in TensorFlow
Lightctr
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32
LightCTR is a tensorflow 2.0 based, extensible toolbox for building CTR/CVR predicting models.
Recommendation_papers
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24
paper collection for recommendation aspet
Simple Implementation Of Ml Algorithms
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17
My simplest implementations of common ML algorithms
Nfm Pyorch
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12
A pytorch implementation for He et al. Neural Factorization Machines for Sparse Predictive Analytics on SIGIR 2017.
Tensorflow2_model_zoo
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10
explore tensorflow 2
Deeprec Torch
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8
Easy-to-use pytorch-based framework for RecSys models
Alitanet
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8
AlitaNet: A click through rate (ctr) prediction deep learning Network implementation with TensorFlow, including LR, FM, AFM, Wide&Deep, DeepFM, xDeepFM, AutoInt, FiBiNet, LS-PLM, DCN, etc.
Torchctr
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6
CTR Prediction on PyTorch
Ml Reading
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5
A collection of interesting machine learning articles/tutorials/things found around the web.
Machine_learning
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5
树模型、SVD、李航《统计学习方法》、机器学习算法实现 by Numpy/Pandas/Tensorflow2 重构中...
Deep4rec
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5
Popular Deep Learning based recommendation algorithms built on top of TensorFlow served on a simple API.
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1-17 of 17 search results
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