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KDD2025 | Multi-granularity Interest Retrieval and Refinement Network for Long-Term User Behavior Modeling in CTR Prediction

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MIRRN

KDD2025 ! ! !

This repository is the implementation for Paper "Multi-granularity Interest Retrieval and Refinement Network for Long-Term User Behavior Modeling in CTR Prediction".

Requirements

  • Ensure you have Python and PyTorch (version 1.8 or higher) installed. Our setup utilized Python 3.8 and PyTorch 1.13.0.
  • Should you wish to leverage GPU processing, please install CUDA.

Dataset

We use three public real-world datasets (Taobao, Alipay and Tmall) in our experiments. We pre-process the data in the same way with ETA and SDIM. You can download the datasets from the links below.

Example

If you have downloaded the source codes, you can train MIRRN model.

$ cd main
$ python build_taobao_to_parquet.py
$ python run_expid.py

You can change the model parameters in ./main/config/General_config/model_config.yaml

Contact

Should you have any questions regarding our paper or codes, please don't hesitate to reach out via email at [email protected].

Acknowledgment

Our code is developed based on reczoo/FuxiCTR: A configurable, tunable, and reproducible library for CTR prediction https://fuxictr.github.io.

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KDD2025 | Multi-granularity Interest Retrieval and Refinement Network for Long-Term User Behavior Modeling in CTR Prediction

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