Search Results for author: Benjamin C. M. Fung

Found 10 papers, 2 papers with code

On the Effectiveness of Interpretable Feedforward Neural Network

no code implementations3 Nov 2021 Miles Q. Li, Benjamin C. M. Fung, Adel Abusitta

We conclude by finding that the generalized IFFNNs achieve comparable classification performance to their normal feedforward neural network counterparts and provide meaningful interpretations.

BIG-bench Machine Learning Classification +2

The Topic Confusion Task: A Novel Scenario for Authorship Attribution

no code implementations17 Apr 2021 Malik H. Altakrori, Jackie Chi Kit Cheung, Benjamin C. M. Fung

Authorship attribution is the problem of identifying the most plausible author of an anonymous text from a set of candidate authors.

Authorship Attribution

Learning Inter-Modal Correspondence and Phenotypes from Multi-Modal Electronic Health Records

1 code implementation12 Nov 2020 Kejing Yin, William K. Cheung, Benjamin C. M. Fung, Jonathan Poon

Such methods generally require an input tensor describing the inter-modal interactions to be pre-established; however, the correspondence between different modalities (e. g., correspondence between medications and diagnoses) can often be missing in practice.

Computational Phenotyping

Deep Learning-based Stress Determinator for Mouse Psychiatric Analysis using Hippocampus Activity

no code implementations11 Jun 2020 Donghan Liu, Benjamin C. M. Fung, Tak Pan Wong

Decoding neurons to extract information from transmission and employ them into other use is the goal of neuroscientists' study.

Hippocampus

I-MAD: Interpretable Malware Detector Using Galaxy Transformer

no code implementations15 Sep 2019 Miles Q. Li, Benjamin C. M. Fung, Philippe Charland, Steven H. H. Ding

It also incorporates our proposed interpretable feed-forward neural network to provide interpretations for its detection results by quantifying the impact of each feature with respect to the prediction.

BIG-bench Machine Learning Malware Detection

ER-AE: Differentially Private Text Generation for Authorship Anonymization

2 code implementations NAACL 2021 Haohan Bo, Steven H. H. Ding, Benjamin C. M. Fung, Farkhund Iqbal

By augmenting the semantic information through a REINFORCE training reward function, the model can generate differentially private text that has a close semantic and similar grammatical structure to the original text while removing personal traits of the writing style.

Privacy Preserving Text Generation

Learning Stylometric Representations for Authorship Analysis

no code implementations3 Jun 2016 Steven H. H. Ding, Benjamin C. M. Fung, Farkhund Iqbal, William K. Cheung

Authorship analysis (AA) is the study of unveiling the hidden properties of authors from a body of exponentially exploding textual data.

Authorship Verification Feature Engineering +1

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