Search Results - "Bosman, P. A. N."

  • Showing 1 - 17 results of 17
Refine Results
  1. 1

    Surrogate-free machine learning-based organ dose reconstruction for pediatric abdominal radiotherapy by Virgolin, M, Wang, Z, Balgobind, B V, van Dijk, I W E M, Wiersma, J, Kroon, P S, Janssens, G O, van Herk, M, Hodgson, D C, Zadravec Zaletel, L, Rasch, C R N, Bel, A, Bosman, P A N, Alderliesten, T

    Published in Physics in medicine & biology (21-12-2020)
    “…To study radiotherapy-related adverse effects, detailed dose information (3D distribution) is needed for accurate dose-effect modeling. For childhood cancer…”
    Get more information
    Journal Article
  2. 2

    Temporal True and Surrogate Fitness Landscape Analysis for Expensive Bi-Objective Optimisation by Rodriguez, C. J, Thomson, S. L, Alderliesten, T, Bosman, P. A. N

    Published 09-04-2024
    “…Many real-world problems have expensive-to-compute fitness functions and are multi-objective in nature. Surrogate-assisted evolutionary algorithms are often…”
    Get full text
    Journal Article
  3. 3

    Real-Valued Evolutionary Multi-Modal Optimization driven by Hill-Valley Clustering by Maree, S. C, Alderliesten, T, Thierens, D, Bosman, P. A. N

    Published 16-10-2018
    “…In Proceedings of the Genetic and Evolutionary Computation Conference 2018, GECCO-2018, July 15-19, 2018, Kyoto, Japan. ACM, New York, NY, USA Model-based…”
    Get full text
    Journal Article
  4. 4

    On Gradients and Hybrid Evolutionary Algorithms for Real-Valued Multiobjective Optimization by Bosman, P. A. N.

    “…Algorithms that make use of the gradient, i.e., the direction of maximum improvement, to search for the optimum of a single-objective function have been around…”
    Get full text
    Journal Article
  5. 5

    Surrogate-free machine learning-based organ dose reconstruction for pediatric abdominal radiotherapy by Virgolin, M, Wang, Z, Balgobind, B. V, van Dijk, I. W. E. M, Wiersma, J, Kroon, P. S, Janssens, G. O, van Herk, M, Hodgson, D. C, Zaletel, L. Zadravec, Rasch, C. R. N, Bel, A, Bosman, P. A. N, Alderliesten, T

    Published 10-02-2021
    “…Physics in Medicine & Biology. 2020 Dec 8;65(24):245021 To study radiotherapy-related adverse effects, detailed dose information (3D distribution) is needed…”
    Get full text
    Journal Article
  6. 6

    The balance between proximity and diversity in multiobjective evolutionary algorithms by Bosman, P.A.N., Thierens, D.

    “…Over the last decade, a variety of evolutionary algorithms (EAs) have been proposed for solving multiobjective optimization problems. Especially more recent…”
    Get full text
    Journal Article
  7. 7

    Deep learning-based auto-segmentation of paraganglioma for growth monitoring by Sijben, E. M. C, Jansen, J. C, de Ridder, M, Bosman, P. A. N, Alderliesten, T

    Published 19-03-2024
    “…Volume measurement of a paraganglioma (a rare neuroendocrine tumor that typically forms along major blood vessels and nerve pathways in the head and neck…”
    Get full text
    Journal Article
  8. 8

    Function Class Learning with Genetic Programming: Towards Explainable Meta Learning for Tumor Growth Functionals by Sijben, E. M. C, Jansen, J. C, Bosman, P. A. N, Alderliesten, T

    Published 19-02-2024
    “…Paragangliomas are rare, primarily slow-growing tumors for which the underlying growth pattern is unknown. Therefore, determining the best care for a patient…”
    Get full text
    Journal Article
  9. 9

    Multi-modal multi-objective model-based genetic programming to find multiple diverse high-quality models by Sijben, E. M. C, Alderliesten, T, Bosman, P. A. N

    Published 24-03-2022
    “…Explainable artificial intelligence (XAI) is an important and rapidly expanding research topic. The goal of XAI is to gain trust in a machine learning (ML)…”
    Get full text
    Journal Article
  10. 10

    Real-valued Evolutionary Multi-modal Multi-objective Optimization by Hill-Valley Clustering by Maree, S. C, Alderliesten, T, Bosman, P. A. N

    Published 28-10-2020
    “…In model-based evolutionary algorithms (EAs), the underlying search distribution is adapted to the problem at hand, for example based on dependencies between…”
    Get full text
    Journal Article
  11. 11

    Ensuring smoothly navigable approximation sets by Bezier curve parameterizations in evolutionary bi-objective optimization -- applied to brachytherapy treatment planning for prostate cancer by Maree, S. C, Alderliesten, T, Bosman, P. A. N

    Published 11-06-2020
    “…The aim of bi-objective optimization is to obtain an approximation set of (near) Pareto optimal solutions. A decision maker then navigates this set to select a…”
    Get full text
    Journal Article
  12. 12

    Uncrowded Hypervolume-based Multi-objective Optimization with Gene-pool Optimal Mixing by Maree, S. C, Alderliesten, T, Bosman, P. A. N

    Published 10-04-2020
    “…Domination-based multi-objective (MO) evolutionary algorithms (EAs) are today arguably the most frequently used type of MOEA. These methods however stagnate…”
    Get full text
    Journal Article
  13. 13

    Benchmarking HillVallEA for the GECCO 2019 Competition on Multimodal Optimization by Maree, S. C, Alderliesten, T, Bosman, P. A. N

    Published 25-07-2019
    “…This report presents benchmarking results of the Hill-Valley Evolutionary Algorithm version 2019 (HillVallEA19) on the CEC2013 niching benchmark suite under…”
    Get full text
    Journal Article
  14. 14

    Local Search is a Remarkably Strong Baseline for Neural Architecture Search by Ottelander, T. Den, Dushatskiy, A, Virgolin, M, Bosman, P. A. N

    Published 19-04-2020
    “…Neural Architecture Search (NAS), i.e., the automation of neural network design, has gained much popularity in recent years with increasingly complex search…”
    Get full text
    Journal Article
  15. 15

    Inventory management and the impact of anticipation in evolutionary stochastic online dynamic optimization by Bosman, P.A.N., La Poutre, H.

    “…Inventory management (IM) is an important area in logistics. The goal is to manage the inventory of a vendor as efficiently as possible. Its practical…”
    Get full text
    Conference Proceeding
  16. 16

    Benchmarking the Hill-Valley Evolutionary Algorithm for the GECCO 2018 Competition on Niching Methods Multimodal Optimization by Maree, S. C, Alderliesten, T, Thierens, D, Bosman, P. A. N

    Published 30-06-2018
    “…This report presents benchmarking results of the latest version of the Hill-Valley Evolutionary Algorithm (HillVallEA) on the CEC2013 niching benchmark suite…”
    Get full text
    Journal Article
  17. 17

    Adaptive Strategies for Dynamic Pricing Agents by Ramezani, S., Bosman, P. A. N., La Poutre, H.

    “…Dynamic Pricing (DyP) is a form of Revenue Management in which the price of a (usually) perishable good is changed over time to increase revenue. It is an…”
    Get full text
    Conference Proceeding