frankfqchen / DeepICF

TensorFlow Implementation of Deep Item-based Collaborative Filtering Model for Top-N Recommendation

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DeepICF

TensorFlow Implementation of Deep Item-based Collaborative Filtering Model for Top-N Recommendation

This is the official implementation for the paper as follows, which is based on the implementation of NAIS (TKDE 2018):

  • Deep Item-based Collaborative Filtering for Top-N Recommendation Feng Xue, Xiangnan He, Xiang Wang, Jiandong Xu, Kai Liu, & Richang Hong, ACM Transactions on Information Systems (TOIS 2019).

Two deep collaborative filtering models: DeepICF & DeepICF+a. To target the models for implicit feedback and ranking task, we optimize them using log loss with negative sampling.

Please cite our paper if you use our codes. Thx!

Environment Settings

  • Python: '2.7'
  • TensorFlow: 'r1.0'
  • Numpy: '1.13'

Examples to run the codes

Run DeepICF (with FISM item embeddings pre-training):

python DeepICF.py --path Data/ --dataset ml-1m --epochs 100 --verbose 1 --batch_choice user --embed_size 16 --layers [64,32,16] --regs [1e-06,1e-06] --reg_W [0.1,0.1,0.1,0.1] --alpha 0.5 --train_loss 1 --num_neg 4 --lr 0.01 --batch_norm 1 --pretrain 1

Output of DeepICF:


...

Run DeepICF+a (with FISM item embeddings pre-training):

python DeepICF_a.py --path Data/ --dataset ml-1m --epochs 100 --beta 0.8 --weight_size 16 --activation 0 --algorithm 0 --verbose 1 --batch_choice user --embed_size 16 --layers [64,32,16] --regs [1e-06,1e-06,1e-06] --reg_W [10,10,10,10] --alpha 0 --train_loss 1 --num_neg 4 --lr 0.01 --batch_norm 1 --pretrain 1

Output of DeepICF+a:


...

Datasets

We provide two processed datasets: MovieLens 1 Million (ml-1m) and Pinterest (pinterest-20).

train.rating:

  • Train file.
  • Each Line is a training instance: userID\t itemID\t rating\t timestamp (if have)

test.rating:

  • Test file (positive instances).
  • Each Line is a testing instance: userID\t itemID\t rating\t timestamp (if have)

test.negative:

  • Test file (negative instances).
  • Each line corresponds to the line of test.rating, containing 99 negative samples.
  • Each line is in the format: (userID,itemID)\t negativeItemID1\t negativeItemID2 ...

Update Date: Feb 23, 2019

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TensorFlow Implementation of Deep Item-based Collaborative Filtering Model for Top-N Recommendation

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