9 results on '"Bäck, T.H.W."'
Search Results
2. Learning the characteristics of engineering optimization problems with applications in automotive crash
- Author
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Long, F.X., Stein, B. van, Frenzel, M., Krause, P., Gitterle, M., Bäck, T.H.W., and Fieldsend, J.E.
- Published
- 2022
- Full Text
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3. Unsupervised strategies for identifying optimal parameters in Quantum Approximate Optimization Algorithm
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MOUSSA, C., Wang, H., Bäck T.H.W., and Dunjko, V
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Quantum Physics ,Control and Systems Engineering ,FOS: Physical sciences ,combinatorial optimization ,Electrical and Electronic Engineering ,QAOA ,Quantum Physics (quant-ph) ,Condensed Matter Physics ,quantum approximate optimization algorithm ,quantum computing ,Atomic and Molecular Physics, and Optics ,clustering - Abstract
As combinatorial optimization is one of the main quantum computing applications, many methods based on parameterized quantum circuits are being developed. In general, a set of parameters are being tweaked to optimize a cost function out of the quantum circuit output. One of these algorithms, the Quantum Approximate Optimization Algorithm stands out as a promising approach to tackling combinatorial problems. However, finding the appropriate parameters is a difficult task. Although QAOA exhibits concentration properties, they can depend on instances characteristics that may not be easy to identify, but may nonetheless offer useful information to find good parameters. In this work, we study unsupervised Machine Learning approaches for setting these parameters without optimization. We perform clustering with the angle values but also instances encodings (using instance features or the output of a variational graph autoencoder), and compare different approaches. These angle-finding strategies can be used to reduce calls to quantum circuits when leveraging QAOA as a subroutine. We showcase them within Recursive-QAOA up to depth $3$ where the number of QAOA parameters used per iteration is limited to $3$, achieving a median approximation ratio of $0.94$ for MaxCut over $200$ Erd\H{o}s-R\'{e}nyi graphs. We obtain similar performances to the case where we extensively optimize the angles, hence saving numerous circuit calls., Comment: Second version after publishing in journal
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- 2022
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4. Artificial Intelligence for the Design of Symmetric Cryptographic Primitives
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Mariot, L., Jacobovic, D., Bäck, T.H.W., Batina, L., Buhan, I., Picek, S., Hernandez-Castro J., Batina, L., Buhan, I., and Picek, S.
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- 2022
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5. Cluster-based Kriging approximation algorithms for complexity reduction
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Stein, B. van, Wang, H., Kowalczyk, W.J., Emmerich, M.T.M., and Bäck, T.H.W.
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FOS: Computer and information sciences ,0209 industrial biotechnology ,Computer Science - Artificial Intelligence ,Computer science ,Machine Learning (stat.ML) ,02 engineering and technology ,Field (computer science) ,Evolutionary computation ,Machine Learning (cs.LG) ,Set (abstract data type) ,020901 industrial engineering & automation ,Surrogate model ,Quadratic equation ,Statistics - Machine Learning ,Artificial Intelligence ,Kriging ,0202 electrical engineering, electronic engineering, information engineering ,Statistics::Methodology ,Approximation algorithm ,Regression analysis ,Statistics::Computation ,Data set ,Computer Science - Learning ,Artificial Intelligence (cs.AI) ,Data point ,020201 artificial intelligence & image processing ,Algorithm - Abstract
Kriging or Gaussian Process Regression is applied in many fields as a non-linear regression model as well as a surrogate model in the field of evolutionary computation. However, the computational and space complexity of Kriging, that is cubic and quadratic in the number of data points respectively, becomes a major bottleneck with more and more data available nowadays. In this paper, we propose a general methodology for the complexity reduction, called cluster Kriging, where the whole data set is partitioned into smaller clusters and multiple Kriging models are built on top of them. In addition, four Kriging approximation algorithms are proposed as candidate algorithms within the new framework. Each of these algorithms can be applied to much larger data sets while maintaining the advantages and power of Kriging. The proposed algorithms are explained in detail and compared empirically against a broad set of existing state-of-the-art Kriging approximation methods on a well-defined testing framework. According to the empirical study, the proposed algorithms consistently outperform the existing algorithms. Moreover, some practical suggestions are provided for using the proposed algorithms., Submitted to IEEE Computational Intelligence Magazine for review
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- 2019
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6. Designing Air Flow with Surrogate-assisted Phenotypic Niching
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Hagg, A., Wilde, D., Asteroth, A., Bäck, T.H.W., Preuss, M., Deutz, A., Wang, H., Doerr, C., Emmerich, M.T.M., Trautmann, H., Preuss, M., Deutz, A., Wang, H., Doerr, C., Emmerich, M.T.M., and Trautmann, H.
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FOS: Computer and information sciences ,050101 languages & linguistics ,Optimization problem ,Computer science ,02 engineering and technology ,Machine learning ,computer.software_genre ,Domain (software engineering) ,Set (abstract data type) ,Computational Engineering, Finance, and Science (cs.CE) ,0202 electrical engineering, electronic engineering, information engineering ,Feature (machine learning) ,Fluid dynamics ,FOS: Mathematics ,0501 psychology and cognitive sciences ,Mathematics - Numerical Analysis ,Neural and Evolutionary Computing (cs.NE) ,Computer Science - Computational Engineering, Finance, and Science ,business.industry ,05 social sciences ,Sampling (statistics) ,Computer Science - Neural and Evolutionary Computing ,Numerical Analysis (math.NA) ,Solver ,020201 artificial intelligence & image processing ,Artificial intelligence ,Focus (optics) ,business ,computer - Abstract
In complex, expensive optimization domains we often narrowly focus on finding high performing solutions, instead of expanding our understanding of the domain itself. But what if we could quickly understand the complex behaviors that can emerge in said domains instead? We introduce surrogate-assisted phenotypic niching, a quality diversity algorithm which allows to discover a large, diverse set of behaviors by using computationally expensive phenotypic features. In this work we discover the types of air flow in a 2D fluid dynamics optimization problem. A fast GPU-based fluid dynamics solver is used in conjunction with surrogate models to accurately predict fluid characteristics from the shapes that produce the air flow. We show that these features can be modeled in a data-driven way while sampling to improve performance, rather than explicitly sampling to improve feature models. Our method can reduce the need to run an infeasibly large set of simulations while still being able to design a large diversity of air flows and the shapes that cause them. Discovering diversity of behaviors helps engineers to better understand expensive domains and their solutions.
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- 2021
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7. An Analysis of Phenotypic Diversity in Multi-Solution Optimization
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Hagg, A., Preuss, M., Asteroth, A., Bäck, T.H.W., Filipič, B., Minisci, E., Vasile, M., Filipič, B., Minisci, E., and Vasile, M.
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FOS: Computer and information sciences ,Computer Science - Machine Learning ,Computer Science - Neural and Evolutionary Computing ,Neural and Evolutionary Computing (cs.NE) ,Machine Learning (cs.LG) - Abstract
More and more, optimization methods are used to find diverse solution sets. We compare solution diversity in multi-objective optimization, multimodal optimization, and quality diversity in a simple domain. We show that multiobjective optimization does not always produce much diversity, multimodal optimization produces higher fitness solutions, and quality diversity is not sensitive to genetic neutrality and creates the most diverse set of solutions. An autoencoder is used to discover phenotypic features automatically, producing an even more diverse solution set with quality diversity. Finally, we make recommendations about when to use which approach.
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- 2021
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8. Neural Network Design: Learning from Neural Architecture Search
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Stein, N. van, Wang, H., and Bäck, T.H.W.
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FOS: Computer and information sciences ,Computer Science - Machine Learning ,Computer science ,Feature extraction ,02 engineering and technology ,Machine learning ,computer.software_genre ,Machine Learning (cs.LG) ,Set (abstract data type) ,03 medical and health sciences ,0302 clinical medicine ,0202 electrical engineering, electronic engineering, information engineering ,Neural and Evolutionary Computing (cs.NE) ,Network architecture ,Artificial neural network ,Contextual image classification ,business.industry ,Computer Science - Neural and Evolutionary Computing ,Benchmark (computing) ,020201 artificial intelligence & image processing ,Artificial intelligence ,Problem set ,business ,computer ,030217 neurology & neurosurgery ,MNIST database - Abstract
Neural Architecture Search (NAS) aims to optimize deep neural networks' architecture for better accuracy or smaller computational cost and has recently gained more research interests. Despite various successful approaches proposed to solve the NAS task, the landscape of it, along with its properties, are rarely investigated. In this paper, we argue for the necessity of studying the landscape property thereof and propose to use the so-called Exploratory Landscape Analysis (ELA) techniques for this goal. Taking a broad set of designs of the deep convolutional network, we conduct extensive experimentation to obtain their performance. Based on our analysis of the experimental results, we observed high similarities between well-performing architecture designs, which is then used to significantly narrow the search space to improve the efficiency of any NAS algorithm. Moreover, we extract the ELA features over the NAS landscapes on three common image classification data sets, MNIST, Fashion, and CIFAR-10, which shows that the NAS landscape can be distinguished for those three data sets. Also, when comparing to the ELA features of the well-known Black-Box optimization Benchmarking (BBOB) problem set, we found out that the NAS landscapes surprisingly form a new problem class on its own, which can be separated from all 24 BBOB problems. Given this interesting observation, we, therefore, state the importance of further investigation on selecting an efficient optimizer for the NAS landscape as well as the necessity of augmenting the current benchmark problem set.
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- 2020
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9. Dynamic vehicle routing with time windows in theory and practice
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Yang, Z., Osta, J.P. van, Veen, B. van, Krevelen, R. van, Klaveren, R. van, Stam, A., Kok, J.N., Bäck, T.H.W., and Emmerich, M.T.M.
- Abstract
The vehicle routing problem is a classical combinatorial optimization problem. This work is about a variant of the vehicle routing problem with dynamically changing orders and time windows. In real-world applications often the demands change during operation time. New orders occur and others are canceled. In this case new schedules need to be generated on-the-fly. Online optimization algorithms for dynamical vehicle routing address this problem but so far they do not consider time windows. Moreover, to match the scenarios found in real-world problems adaptations of benchmarks are required. In this paper, a practical problem is modeled based on the procedure of daily routing of a delivery company. New orders by customers are introduced dynamically during the working day and need to be integrated into the schedule. A multiple ant colony algorithm combined with powerful local search procedures is proposed to solve the dynamic vehicle routing problem with time windows. The performance is tested on a new benchmark based on simulations of a working day. The problems are taken from Solomon’s benchmarks but a certain percentage of the orders are only revealed to the algorithm during operation time. Different versions of the MACS algorithm are tested and a high performing variant is identified. Finally, the algorithm is tested in situ: In a field study, the algorithm schedules a fleet of cars for a surveillance company. We compare the performance of the algorithm to that of the procedure used by the company and we summarize insights gained from the implementation of the real-world study. The results show that the multiple ant colony algorithm can get a much better solution on the academic benchmark problem and also can be integrated in a real-world environment.
- Published
- 2017
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