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Mu-En Wu

Researcher at National Taipei University of Technology

Publications -  87
Citations -  928

Mu-En Wu is an academic researcher from National Taipei University of Technology. The author has contributed to research in topics: Trading strategy & Kelly criterion. The author has an hindex of 13, co-authored 87 publications receiving 647 citations. Previous affiliations of Mu-En Wu include Academia Sinica & Nanyang Technological University.

Papers
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Journal ArticleDOI

A secure authenticated and key exchange scheme for fog computing

TL;DR: Fog computing architecture is used in various environments such as smart manufacturing, vehicular ad hoc networks, however, as an extension of cloud computing, inheriting security challenges of clo...
Journal ArticleDOI

Dual RSA and Its Security Analysis

TL;DR: New variants of an RSA whose key generation algorithms output two distinct RSA key pairs having the same public and private exponents, called dual RSA, can be used in scenarios that require two instances of RSA with the advantage of reducing the storage requirements for the keys.
Proceedings ArticleDOI

Applied attention-based LSTM neural networks in stock prediction

TL;DR: An attention-based long short-term memory model is proposed to predict stock price movement and make trading strategies and makes trading strategies more predictable.
Book ChapterDOI

Decentralized E-Voting Systems Based on the Blockchain Technology

TL;DR: The core idea is to combine the blockchain technology with secret sharing scheme and homomorphic encryption in order to realize the decentralized e-voting application without a trusted third party.
Journal ArticleDOI

Portfolio management system in equity market neutral using reinforcement learning

TL;DR: The developed Portfolio Management System using reinforcement learning with two neural networks is profitable, effective, and offers lower investment risk among almost all datasets, and the novel reward function involving the Sharpe ratio enhances performance, and well supports resource-allocation for empirical stock trading.