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README.md

Outline

Sequential Recommenders

Modeling users' dynamic interests has drawn increasingly attention. In this project, we try to implement two kinds of sequential recommenders, i.e., Markov Chains-based methods and neural network-based methods. Currently, we include following models:

Neural models:

The task of sequential recommendation is to predict next item(s) that a user is likely to choose based on his/her ordered behavior sequence. Therefore, neural networks that are sequence-aware can be used to encode the user's history.

* RNN [1]. This is a modified version of GRU4Rec. We train the RNN(LSTM) model via standard BBTT, instead of the per-step training in original paper[1].
* TCN [2]. Use temporal convolutional neural network (a.k.a. dilated causal convolutional neural network) to model sequence data.
* Transformer [3]. Use Transformer (a.k.a. self-attention neural network) to model sequence data.

Markov Chains:

Methods which rely on Markov Chains (MCs) also assume users' next item depend on their previous item(s). We implement two main MCs-based methods.

* FPMC [4]. FPMC models users's dynamic interests by factorizaing item-to-item transitions.
* Fossil [5]. Fossil follows the similar idea of FPMC in modeling users' dynamic interests.

DISCLAIMER: Since we intend to unify these methods into the same framework, we cannot guarantee that all models are implemented the same as authors' official implementations.

References

  1. Hidasi et al. Session-based recommendations with recurrent neural networks. ICLR'16.
  2. Yuan et al. A Simple Convolutional Generative Network for Next Item Recommendation. WSDM'19.
  3. Kang and McAuley. Self-Attentive Sequential Recommendation. ICDM'18.
  4. Rendle et al. Factorizing Personalized Markov Chains for Next-Basket Recommendation. WWW'10.
  5. He et al. Fusing similarity models with markov chains for sparse sequential recommendation. ICDM'16.
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