Search Results for author: Aidong Lu

Found 8 papers, 3 papers with code

What User Behaviors Make the Differences During the Process of Visual Analytics?

no code implementations1 Nov 2023 Zekun Wu, Shahin Doroudian, Aidong Lu

This work presents a study on a comprehensive data collection of user behaviors, and our analysis approach with time-series classification methods.

Time Series Time Series Classification

Part Aware Contrastive Learning for Self-Supervised Action Recognition

1 code implementation1 May 2023 Yilei Hua, Wenhan Wu, Ce Zheng, Aidong Lu, Mengyuan Liu, Chen Chen, Shiqian Wu

This paper proposes an attention-based contrastive learning framework for skeleton representation learning, called SkeAttnCLR, which integrates local similarity and global features for skeleton-based action representations.

Contrastive Learning Data Augmentation +3

A Lightweight Graph Transformer Network for Human Mesh Reconstruction from 2D Human Pose

1 code implementation24 Nov 2021 Ce Zheng, Matias Mendieta, Pu Wang, Aidong Lu, Chen Chen

We propose a pose analysis module that uses graph transformers to exploit structured and implicit joint correlations, and a mesh regression module that combines the extracted pose feature with the mesh template to reconstruct the final human mesh.

3D Human Pose Estimation 3D Human Shape Estimation +2

Poisoning Attacks on Fair Machine Learning

no code implementations17 Oct 2021 Minh-Hao Van, Wei Du, Xintao Wu, Aidong Lu

Our framework enables attackers to flexibly adjust the attack's focus on prediction accuracy or fairness and accurately quantify the impact of each candidate point to both accuracy loss and fairness violation, thus producing effective poisoning samples.

BIG-bench Machine Learning Fairness

One-Class Adversarial Nets for Fraud Detection

1 code implementation5 Mar 2018 Panpan Zheng, Shuhan Yuan, Xintao Wu, Jun Li, Aidong Lu

Currently, most of the fraud detection approaches require a training dataset that contains records of both benign and malicious users.

Fraud Detection One-Class Classification

Spectrum-based deep neural networks for fraud detection

no code implementations3 Jun 2017 Shuhan Yuan, Xintao Wu, Jun Li, Aidong Lu

Due to the small dimension of spectral coordinates (compared with the dimension of the adjacency matrix derived from a graph), training deep neural networks becomes feasible.

Fraud Detection

On Spectral Analysis of Directed Signed Graphs

no code implementations23 Dec 2016 Yuemeng Li, Xintao Wu, Aidong Lu

It has been shown that the adjacency eigenspace of a network contains key information of its underlying structure.

Clustering

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