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stxupengyu/README.md

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  1. Matrix-Factorization-for-Recommendation Matrix-Factorization-for-Recommendation Public

    Using Matrix Factorization/Probabilistic Matrix Factorization to solve Recommendation。矩阵分解进行推荐系统算法。

    R 2

  2. Matrix-Factorization-Implicit-Feedback Matrix-Factorization-Implicit-Feedback Public

    使用矩阵分解算法处理隐式反馈数据,并进行Top-N推荐。The matrix factorization algorithm is used to process the implicit feedback data and make top-N recommendation.

    2

  3. NCF-MF-for-Recommendation NCF-MF-for-Recommendation Public

    分别使用传统方法(KNN,SVD,NMF等)和深度方法(NCF)进行推荐系统的评分预测。Traditional methods (KNN, SVD, NMF, etc.) and depth method (NCF) were used to predict rating of the recommendation system.

    Jupyter Notebook 6

  4. P300-BCI-Data-Analysis P300-BCI-Data-Analysis Public

    2020年研究生数学建模竞赛C题,全国二等奖,分析脑机接口数据进行分析预测。The data of BCI were analyzed and predicted.

    Jupyter Notebook 6 3

  5. multi-factor-strategy-joinquant multi-factor-strategy-joinquant Public

    在聚宽(joinquant)平台上使用多因子策略进行量化投资模拟。

    Jupyter Notebook 27 9

  6. CVPR-2020-LEAP CVPR-2020-LEAP Public

    Unofficial implement of LEAP(Deep Representation Learning on Long-tailed Data: A Learnable Embedding Augmentation Perspective) for Multi-Label Classification.

    Python 7 1