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Yi-Ping Phoebe Chen

Researcher at La Trobe University

Publications -  287
Citations -  5400

Yi-Ping Phoebe Chen is an academic researcher from La Trobe University. The author has contributed to research in topics: Computer science & Feature selection. The author has an hindex of 33, co-authored 268 publications receiving 4206 citations. Previous affiliations of Yi-Ping Phoebe Chen include Fujian Agriculture and Forestry University & Deakin University.

Papers
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Journal Article

From Unsupervised to Few-shot Graph Anomaly Detection: A Multi-scale Contrastive Learning Approach

TL;DR: This work proposes a novel framework, graph ANomaly dEtection framework with Multi-scale cONtrastive lEarning (ANEMONE in short), using a graph neural network as a backbone to encode the information from multiple graph scales (views), and demonstrates that the proposed method ANEMONE and its variant ANEMone-FS consistently outperforms state-of-the-art algorithms on six benchmark datasets.
Journal ArticleDOI

Identification of well-differentiated gene expressions between Han Chinese and Japanese using genome-wide microarray data analysis

TL;DR: The results supported that gene expression is regulated by genetic variants and there is a genetic basis for the phenotypic differences between Han Chinese and Japanese populations.
Proceedings ArticleDOI

Analyzing inconsistency toward enhancing integration of biological molecular databases

TL;DR: A method by which to measure the degree of inconsistency between biological databases is presented, which not only presents a guideline for correct and efficient database integration, but also exposes high quality data for data mining and knowledge discovery.
Proceedings ArticleDOI

Early Breast Cancer Identification: Which Way to Go? Microarray or Image Based Computer Aided Diagnosis!

TL;DR: Results suggest the most effective means of breast cancer identification in the early stage is a hybrid approach.
Book ChapterDOI

Detecting collusion attacks in security protocols

TL;DR: A framework by which to detect collusion attacks in security protocols is proposed and the case study demonstrates that the methods are useful and promising in discovering and preventing collusion attacks.