Customizable RecSys Simulator for OpenAI Gym

Overview

gym-recsys: Customizable RecSys Simulator for OpenAI Gym

Installation | How to use | Examples | Citation

This package describes an OpenAI Gym interface for creating a simulation environment of reinforcement learning-based recommender systems (RL-RecSys). The design strives for simple and flexible APIs to support novel research.

Installation

gym-recsys can be installed from PyPI using pip:

pip install gym-recsys

Note that we support Python 3.7+ only.

You can also install it directly from this GitHub repository using pip:

pip install git+git://github.com/zuoxingdong/gym-recsys.git

How to use

To use gym-recsys, you need to define the following components:

user_ids

This describes a list of available user IDs for the simulation. Normally, a user ID is an integer.

An example of three users: user_ids = [0, 1, 2]

Note that the user ID will be taken as an input to user_state_model_callback to generate observations of the user state.

item_category

This describes the categories of a list of available items. The data type should be a list of strings. The indices of the list is assumed to correspond to item IDs.

An example of three items: item_category = ['sci-fi', 'romance', 'sci-fi']

The category information is mainly used for visualization via env.render().

item_popularity

This describe the popularity measure of a list of available items. The data type should be a list (or 1-dim array) of integers. The indices of the list is assumed to correspond to item IDs.

An example of three items: item_popularity = [5, 3, 1]

The popularity information is used for calculating Expected Popularity Complement (EPC) in the visualization.

hist_seq_len

This is an integer describing the number of most recently clicked items by the user to encode as the current state of the user.

An example of the historical sequence with length 3: hist_seq = [-1, 2, 0]. The item ID -1 indicates an empty event. In this case, the user clicked two items in the past, first item ID 2 followed by a second item ID 0.

The internal FIFO queue hist_seq will be taken as an input to both user_state_model_callback and reward_model_callback to generate observations of the user state.

slate_size

This is an integer describing the size of the slate (display list of recommended items).

It induces a combinatorial action space for the RL agent.

user_state_model_callback

This is a Python callback function taking user_id and hist_seq as inputs to generate an observation of current user state.

Note that it is generic. Either pre-defined heuristic computations or pre-trained neural network models using user/item embeddings can be wrapped as a callback function.

reward_model_callback

This is a Python callback function taking user_id, hist_seq and action as inputs to generate a reward value for each item in the slate. (i.e. action)

Note that it is generic. Either pre-defined heuristic computations or pre-trained neural network models using user/item embeddings can be wrapped as a callback function.

Examples

To illustrate the simple yet flexible design of gym-recsys, we provide a toy example to construct a simulation environment.

First, let us sample random embeddings for one user and five items:

user_features = np.random.randn(1, 10)
item_features = np.random.randn(5, 10)

Now let us define the category and popularity score for each item:

item_category = ['sci-fi', 'romance', 'sci-fi', 'action', 'sci-fi']
item_popularity = [5, 3, 1, 2, 3]

Then, we define callback functions for user state and reward values:

def user_state_model_callback(user_id, hist_seq):
    return user_features[user_id]

def reward_model_callback(user_id, hist_seq, action):
    return np.inner(user_features[user_id], item_features[action])

Finally, we are ready to create a simulation environment with OpenAI Gym API:

env_kws = dict(
    user_ids=[0],
    item_category=item_category,
    item_popularity=item_popularity,
    hist_seq_len=3,
    slate_size=2,
    user_state_model_callback=user_state_model_callback,
    reward_model_callback=reward_model_callback
)
env = gym.make('gym_recsys:RecSys-t50-v0', **env_kws)

Note that we created the environment with slate size of two items and historical interactions of the recent 3 steps. The horizon is 50 time steps.

Now let us play with this environment.

By evaluating a random agent with 100 times, we got the following performance:

Agent Episode Reward CTR
random 73.54 68.23%

Given the sampled embeddings, let's say item 1 and 3 lead to maximally possible reward values. Let us see how a greedy policy performs by constantly recommending item 1 and 3:

Agent Episode Reward CTR
greedy 180.86 97.93%

Last but not least, for the most fun part, let us generate animations of both policy for an episode via gym's Monitor wrapper, showing as GIFs in the following:

Random Agent

Greedy Agent

Citation

If you use gym-recsys in your work, please cite this repository:

@software{zuo2021recsys,
  author={Zuo, Xingdong},
  title={gym-recsys: Customizable RecSys Simulator for OpenAI Gym},
  url={https://github.com/zuoxingdong/gym-recsys},
  year={2021}
}
Owner
Xingdong Zuo
AI in well-being is my dream. Neural networks need to understand the world causally.
Xingdong Zuo
Official implementation of the PICASO: Permutation-Invariant Cascaded Attentional Set Operator

PICASO Official PyTorch implemetation for the paper PICASO:Permutation-Invariant Cascaded Attentive Set Operator. Requirements Python 3 torch = 1.0 n

Samira Zare 0 Dec 23, 2021
Implementation of a Transformer that Ponders, using the scheme from the PonderNet paper

Ponder(ing) Transformer Implementation of a Transformer that learns to adapt the number of computational steps it takes depending on the difficulty of

Phil Wang 65 Oct 04, 2022
A Closer Look at Reference Learning for Fourier Phase Retrieval

A Closer Look at Reference Learning for Fourier Phase Retrieval This repository contains code for our NeurIPS 2021 Workshop on Deep Learning and Inver

Tobias Uelwer 1 Oct 28, 2021
Additional environments compatible with OpenAI gym

Decentralized Control of Quadrotor Swarms with End-to-end Deep Reinforcement Learning A codebase for training reinforcement learning policies for quad

Zhehui Huang 40 Dec 06, 2022
Unofficial PyTorch implementation of "RTM3D: Real-time Monocular 3D Detection from Object Keypoints for Autonomous Driving" (ECCV 2020)

RTM3D-PyTorch The PyTorch Implementation of the paper: RTM3D: Real-time Monocular 3D Detection from Object Keypoints for Autonomous Driving (ECCV 2020

Nguyen Mau Dzung 271 Nov 29, 2022
Accepted at ICCV-2021: Workshop on Computer Vision for Automated Medical Diagnosis (CVAMD)

Is it Time to Replace CNNs with Transformers for Medical Images? Accepted at ICCV-2021: Workshop on Computer Vision for Automated Medical Diagnosis (C

Christos Matsoukas 80 Dec 27, 2022
[AAAI22] Reliable Propagation-Correction Modulation for Video Object Segmentation

Reliable Propagation-Correction Modulation for Video Object Segmentation (AAAI22) Preview version paper of this work is available at: https://arxiv.or

Xiaohao Xu 70 Dec 04, 2022
Not Suitable for Work (NSFW) classification using deep neural network Caffe models.

Open nsfw model This repo contains code for running Not Suitable for Work (NSFW) classification deep neural network Caffe models. Please refer our blo

Yahoo 5.6k Jan 05, 2023
A small library for doing fluid simulation with neural networks.

Neural Fluid Fields This is a small library for doing fluid simulation with neural fields. Check out our review paper, Neural Fields in Visual Computi

Towaki 23 Jun 23, 2022
Deep Learning for Morphological Profiling

Deep Learning for Morphological Profiling An end-to-end implementation of a ML System for morphological profiling using self-supervised learning to di

Danielh Carranza 0 Jan 20, 2022
Implementation of OmniNet, Omnidirectional Representations from Transformers, in Pytorch

Omninet - Pytorch Implementation of OmniNet, Omnidirectional Representations from Transformers, in Pytorch. The authors propose that we should be atte

Phil Wang 48 Nov 21, 2022
Neural Network to colorize grayscale images

#colornet Neural Network to colorize grayscale images Results Grayscale Prediction Ground Truth Eiji K used colornet for anime colorization Sources Au

Pavel Hanchar 3.6k Dec 24, 2022
Mmrotate - OpenMMLab Rotated Object Detection Benchmark

OpenMMLab website HOT OpenMMLab platform TRY IT OUT 📘 Documentation | 🛠️ Insta

OpenMMLab 1.2k Jan 04, 2023
Official repository of "Investigating Tradeoffs in Real-World Video Super-Resolution"

RealBasicVSR [Paper] This is the official repository of "Investigating Tradeoffs in Real-World Video Super-Resolution, arXiv". This repository contain

Kelvin C.K. Chan 566 Dec 28, 2022
Vpw analyzer - A visual J1850 VPW analyzer written in Python

VPW Analyzer A visual J1850 VPW analyzer written in Python Requires Tkinter, Pan

7 May 01, 2022
Code to reproduce the results in the paper "Tensor Component Analysis for Interpreting the Latent Space of GANs".

Tensor Component Analysis for Interpreting the Latent Space of GANs [ paper | project page ] Code to reproduce the results in the paper "Tensor Compon

James Oldfield 4 Jun 17, 2022
The Most Efficient Temporal Difference Learning Framework for 2048

moporgic/TDL2048+ TDL2048+ is a highly optimized temporal difference (TD) learning framework for 2048. Features Many common methods related to 2048 ar

Hung Guei 5 Nov 23, 2022
Deep Learning GPU Training System

DIGITS DIGITS (the Deep Learning GPU Training System) is a webapp for training deep learning models. The currently supported frameworks are: Caffe, To

NVIDIA Corporation 4.1k Jan 03, 2023
It is modified Tensorflow 2.x version of Mask R-CNN

[TF 2.X] Mask R-CNN for Object Detection and Segmentation [Notice] : The original mask-rcnn uses the tensorflow 1.X version. I modified it for tensorf

Milner 34 Nov 09, 2022
official Pytorch implementation of ICCV 2021 paper FuseFormer: Fusing Fine-Grained Information in Transformers for Video Inpainting.

FuseFormer: Fusing Fine-Grained Information in Transformers for Video Inpainting By Rui Liu, Hanming Deng, Yangyi Huang, Xiaoyu Shi, Lewei Lu, Wenxiu

77 Dec 27, 2022