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pyKT: A Python Library to Benchmark Deep Learning based Knowledge Tracing Models

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pyKT

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pyKT is a python library build upon PyTorch to train deep learning based knowledge tracing models. The library consists of a standardized set of integrated data preprocessing procedures on more than 7 popular datasets across different domains, 5 detailed prediction scenarios, more than 10 frequently compared DLKT approaches for transparent and extensive experiments. More details about pyKT can see our website and docs.

Installation

Use the following command to install pyKT:

Create conda envirment.

conda create --name=pykt python=3.7.5
source activate pykt
pip install -U pykt-toolkit -i  https://pypi.python.org/simple 

Hyper parameter tunning results

The hyper parameter tunning results of our experiments about all the DLKT models on various datasets can be found at https://drive.google.com/drive/folders/1MWYXj73Ke3zC6bm3enu1gxQQKAHb37hz?usp=drive_link.

References

Projects

  1. https://github.com/hcnoh/knowledge-tracing-collection-pytorch
  2. https://github.com/arshadshk/SAKT-pytorch
  3. https://github.com/shalini1194/SAKT
  4. https://github.com/arshadshk/SAINT-pytorch
  5. https://github.com/Shivanandmn/SAINT_plus-Knowledge-Tracing-
  6. https://github.com/arghosh/AKT
  7. https://github.com/JSLBen/Knowledge-Query-Network-for-Knowledge-Tracing
  8. https://github.com/xiaopengguo/ATKT
  9. https://github.com/jhljx/GKT
  10. https://github.com/THUwangcy/HawkesKT
  11. https://github.com/ApexEDM/iekt
  12. https://github.com/Badstu/CAKT_othermodels/blob/0c28d870c0d5cf52cc2da79225e372be47b5ea83/SKVMN/model.py
  13. https://github.com/bigdata-ustc/EduKTM

Papers

  1. DKT: Deep knowledge tracing
  2. DKT+: Addressing two problems in deep knowledge tracing via prediction-consistent regularization
  3. DKT-Forget: Augmenting knowledge tracing by considering forgetting behavior
  4. KQN: Knowledge query network for knowledge tracing: How knowledge interacts with skills
  5. DKVMN: Dynamic key-value memory networks for knowledge tracing
  6. ATKT: Enhancing Knowledge Tracing via Adversarial Training
  7. GKT: Graph-based knowledge tracing: modeling student proficiency using graph neural network
  8. SAKT: A self-attentive model for knowledge tracing
  9. SAINT: Towards an appropriate query, key, and value computation for knowledge tracing
  10. AKT: Context-aware attentive knowledge tracing
  11. Temporal Cross-Effects in Knowledge Tracing
  12. IEKT: Tracing Knowledge State with Individual Cognition and Acquisition Estimation
  13. SKVMN: Knowledge Tracing with Sequential Key-Value Memory Networks
  14. LPKT: Learning Process-consistent Knowledge Tracing

Citation

We now have a paper you can cite for the our pyKT library:

@inproceedings{liupykt2022,
  title={pyKT: A Python Library to Benchmark Deep Learning based Knowledge Tracing Models},
  author={Liu, Zitao and Liu, Qiongqiong and Chen, Jiahao and Huang, Shuyan and Tang, Jiliang and Luo, Weiqi},
  booktitle={Thirty-sixth Conference on Neural Information Processing Systems Datasets and Benchmarks Track},
  year={2022}
}

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