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Your search keyword '"Wong, Weng Kee"' showing total 20 results

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20 results on '"Wong, Weng Kee"'

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1. An interactive tool for designing efficient toxicology experiments.

2. An Overview of Adaptive Designs and Some of Their Challenges, Benefits, and Innovative Applications.

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3. Metaheuristics for pharmacometrics.

4. Hybrid algorithms for generating optimal designs for discriminating multiple nonlinear models under various error distributional assumptions.

5. Inference for reclassification statistics under nested and non-nested models for biomarker evaluation.

6. Single-cell generalized trend model (scGTM): a flexible and interpretable model of gene expression trend along cell pseudotime.

7. Metaheuristic Solutions to Order-of-Addition Design Problems.

11. A Double Exponential Particle Swarm Optimization with non-uniform variates as stochastic tuning and guaranteed convergence to a global optimum with sample applications to finding optimal exact designs in biostatistics.

12. G-optimal designs for hierarchical linear models: an equivalence theorem and a nature-inspired meta-heuristic algorithm.

13. A Metaheuristic Adaptive Cubature Based Algorithm to Find Bayesian Optimal Designs for Nonlinear Models.

14. CVX‐based algorithms for constructing various optimal regression designs.

15. Extended two-stage adaptive designs with three target responses for phase II clinical trials.

16. A Modified Particle Swarm Optimization Technique for Finding Optimal Designs for Mixture Models.

17. A Semi-Infinite Programming based algorithm for determining T-optimum designs for model discrimination.

18. Correction: G-optimal designs for hierarchical linear models: an equivalence theorem and a nature-inspired meta-heuristic algorithm.

19. Particle swarm based algorithms for finding locally and Bayesian D-optimal designs.

20. An algorithm based on semidefinite programming for finding minimax optimal designs.