This is a TensorFlow implementation for C2-Rec

Related tags

Deep LearningC2-Rec
Overview

This is a TensorFlow implementation for C2-Rec

We refer to the repo SASRec.

Requirements

requirement.txt

Datasets

This repo includes Amazon Beauty dataset as an example. you could also download Amazon review data from here.

Model Training

To train model on Beauty:

python main.py \
--dataset=Beauty \
--train_dir=model_train \
--maxlen=50 \
--dropout_rate=0.5 \
--con_alpha=5.0 \
--rd_alpha=1.0 \
--neg_test=500 \
--user_reg_type=kl \
--lr=0.001 \
--rd_reduce=mean \
--neg_sample_n=50
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