Search Results for author: Yinghao Wu

Found 7 papers, 2 papers with code

OpenCarbonEval: A Unified Carbon Emission Estimation Framework in Large-Scale AI Models

1 code implementation21 May 2024 Zhaojian Yu, Yinghao Wu, Zhuotao Deng, Yansong Tang, Xiao-Ping Zhang

By promoting sustainable AI development and deployment, OpenCarbonEval can help reduce the environmental impact of large-scale models and contribute to a more environmentally responsible future for the AI community.

Video Generation

Fast Butterfly-Core Community Search For Large Labeled Graphs

no code implementations19 Jan 2024 JiaYi Du, Yinghao Wu, Wei Ai, Tao Meng, CanHao Xie, Keqin Li

Community Search (CS) aims to identify densely interconnected subgraphs corresponding to query vertices within a graph.

Community Search

An Effective Index for Truss-based Community Search on Large Directed Graphs

no code implementations19 Jan 2024 Wei Ai, CanHao Xie, Tao Meng, Yinghao Wu, Keqin Li

Community search is a derivative of community detection that enables online and personalized discovery of communities and has found extensive applications in massive real-world networks.

Community Detection Community Search +2

InFIP: An Explainable DNN Intellectual Property Protection Method based on Intrinsic Features

no code implementations14 Oct 2022 Mingfu Xue, Xin Wang, Yinghao Wu, Shifeng Ni, Yushu Zhang, Weiqiang Liu

Since the intrinsic feature is composed of unique interpretation of the model's decision, the intrinsic feature can be regarded as fingerprint of the model.

Explainable artificial intelligence

Detecting Backdoor in Deep Neural Networks via Intentional Adversarial Perturbations

no code implementations29 May 2021 Mingfu Xue, Yinghao Wu, Zhiyu Wu, Yushu Zhang, Jian Wang, Weiqiang Liu

Experimental results show that, the backdoor detection rate of the proposed defense method is 99. 63%, 99. 76% and 99. 91% on Fashion-MNIST, CIFAR-10 and GTSRB datasets, respectively.

Backdoor Attack

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