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Kin Keung Lai

Researcher at Shenzhen University

Publications -  587
Citations -  15177

Kin Keung Lai is an academic researcher from Shenzhen University. The author has contributed to research in topics: Supply chain & Artificial neural network. The author has an hindex of 60, co-authored 547 publications receiving 13120 citations. Previous affiliations of Kin Keung Lai include City University of Hong Kong & North China Electric Power University.

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Forecasting crude oil price with an EMD-based neural network ensemble learning paradigm

TL;DR: In this study, an empirical mode decomposition (EMD) based neural network ensemble learning paradigm is proposed for world crude oil spot price forecasting and empirical results obtained demonstrate attractiveness of the proposed EMD-based neural networksemble learning paradigm.
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A new approach for crude oil price analysis based on Empirical Mode Decomposition

TL;DR: The EEMD is shown to be a vital technique for crude oil price analysis and a substantial improvement of EMD which can better separate the scales naturally by adding white noise series to the original time series and then treating the ensemble averages as the true intrinsic modes.
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A new fuzzy support vector machine to evaluate credit risk

TL;DR: A new fuzzy support vector machine to discriminate good creditors from bad ones is proposed, reformulate this kind of two-group classification problem into a quadratic programming problem and expects it to have more generalization ability while preserving the merit of insensitive to outliers.

Nonconvex Optimization and Its Applications

TL;DR: (Av, v u ) > ( f, v u ), (Av, V u )> (F, V U ), this paper ), (Av and V u ),
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Credit risk assessment with a multistage neural network ensemble learning approach

TL;DR: A multistage neural network ensemble learning model is proposed to evaluate credit risk at the measurement level and the reliability values of the selected neural network models are scaled into a unit interval by logistic transformation.