default author photo

Miłosz Kadziński

Poznan University of Technology

SCHOLARLY PAPERS

9

DOWNLOADS

706

TOTAL CITATIONS

0

Scholarly Papers (9)

1.

An Active Preference Learning Approach to Aid the Selection of Validators in Blockchain Environments

Number of pages: 33 Posted: 20 Oct 2022
Jonas Gehrlein, Grzegorz Miebs, Matteo Brunelli and Miłosz Kadziński
Web3 Foundation, Poznan University of Technology - Institute of Computing Science, University of Trento and Poznan University of Technology
Downloads 220 (349,796)

Abstract:

Loading...

Blockchain ecosystem, Validator selection, Multiple criteria decision analysis, Active learning

2.

A Bayesian Network Approach for Dynamic Behavior Analysis: Real-Time Intention Recognition

Number of pages: 31 Posted: 17 Sep 2024
Jiaxuan Jiang, Jiapeng Liu, Miłosz Kadziński and Liao Xiuwu
affiliation not provided to SSRN, Independent, Poznan University of Technology and Independent
Downloads 90 (742,061)

Abstract:

Loading...

Decision analysis, Intention recognition, Real-time intention, Dynamic behavior, Data Fusion, Noise filtering

3.

Evolutionary Algorithms for Solving Single- and Multiple-Objective Political Redistricting Problems: The Case Study of Poland

Number of pages: 35 Posted: 23 May 2023
Michal Tomczyk and Miłosz Kadziński
Poznan University of Technology and Poznan University of Technology
Downloads 83 (790,029)

Abstract:

Loading...

Political redistricting, Evolutionary algorithms, Multiple-objective optimization, Gerrymandering, Voting systems

4.

Efficient Preference Learning Algorithm for Interactive Evolutionary Multi-Objective Optimization

Number of pages: 36 Posted: 03 Jun 2025
Michal Tomczyk and Miłosz Kadziński
Poznan University of Technology and Poznan University of Technology
Downloads 77 (823,616)

Abstract:

Loading...

Evolutionary multi-objective optimization, Preference Learning, Pairwise Comparisons, Interactive Procedures, Uniform Sampling

5.

A Probabilistic Preference Learning Approach for Multiple Criteria Ranking in Dynamic Decision Context

Number of pages: 29 Posted: 31 Dec 2024 Last Revised: 16 Apr 2025
Siyuan Zhao, Jiapeng Liu, Miłosz Kadziński, Liao Xiuwu and Yao Wang
Independent, Xi'an Jiaotong University (XJTU) - School of Management, Poznan University of Technology, Independent and Xi'an Jiaotong University (XJTU)
Downloads 68 (891,180)

Abstract:

Loading...

6.

Integration Methods for Life Cycle Sustainability Assessment: A Decision Tree to Guide Practitioners

Number of pages: 58 Posted: 27 Jun 2025
Ghent University, Leiden University, Poznan University of Technology, Ghent University, Ghent University and affiliation not provided to SSRN
Downloads 65 (924,743)

Abstract:

Loading...

Life cycle sustainability assessment, decision tree guidance, integration methods, aggregation methods, decision criteria

7.

From Investigation of Expressiveness and Robustness to a Comprehensive Value-Based Framework for Multiple Criteria Sorting Problems

Number of pages: 34 Posted: 28 Nov 2023
Miłosz Kadziński, Michał Wójcik and Moha Ghaderi
Poznan University of Technology, Poznan University of Technology and ESADE Business School, Students
Downloads 47 (1,097,529)

Abstract:

Loading...

Decision Analysis, Multiple criteria decision aiding, Sorting, Model expressiveness, Recommendation robustness

8.

Efficient preference learning algorithm for interactive evolutionary multi-objective optimization

Number of pages: 38 Posted: 29 Aug 2025
Michal Tomczyk and Miłosz Kadziński
Poznan University of Technology and Poznan University of Technology
Downloads 29 (1,332,057)

Abstract:

Loading...

Preference Learning, Pairwise Comparisons, Interactive Procedures, Evolutionary Multi-Objective Optimization, Uniform Sampling

9.

Jecdm: A Java Framework for Evolutionary Computation and Decision-Making

Number of pages: 24 Posted: 07 Aug 2025
Michal Tomczyk and Miłosz Kadziński
Poznan University of Technology and Poznan University of Technology
Downloads 27 (1,359,097)

Abstract:

Loading...

multi-criteria decision making, evolutionary algorithms, multi-objective optimization, computational framework