Zijian Zhen (Kirk-Zhen)

Kirk-Zhen

Geek Repo

Company:University of Illinois Urbana-Champaign

Location:Shenzhen, China

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Zijian Zhen's repositories

Data-Efficient-Swin-Transformer

This is an implementation for a combined mechanism of Swin-Transformer and DeiT.

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Fast-Monte-Carlo-Algorithm-for-Matrix-Multiplication

A python implementation of the Fast Monte Carlo Algorithm for Approximate Matrix Multiplication

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DANN

An implementation of Domain Adversarial Neural Network (DANN)

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Generating-Sketches-From-Images-CycleGAN-pix2pix

Reproducibility of pix2pix and CycleGAN

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awesome-domain-adaptation

A collection of AWESOME things about domian adaptation

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awesome-explanatory-supervision

List of relevant resources for machine learning from explanatory supervision

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awesome-industrial-anomaly-detection

Paper list and datasets for industrial image anomaly/defect detection (updating). 工业异常/瑕疵检测论文及数据集检索库(持续更新)。

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DeepLearningHealthcare-BiteNet

Reproducibility of Bidirectional Temporal Encoder Network (BiteNet)

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Motif-Finding

Experiment and implementation of Gibbs Sampling for Motif-Finding

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oddBall

This is an implementation of oddBall

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DeepLearners-California-Unemployment

Group Project - UIUC CS547/IE534 Deep Learning

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KDD2019_HetGNN

code of HetGNN

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rrcf

🌲 Implementation of the Robust Random Cut Forest algorithm for anomaly detection on streams

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SHOT

code released for our ICML 2020 paper "Do We Really Need to Access the Source Data? Source Hypothesis Transfer for Unsupervised Domain Adaptation"

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SHOT-plus

code for our TPAMI 2021 paper "Source Data-absent Unsupervised Domain Adaptation through Hypothesis Transfer and Labeling Transfer"

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