<div>Learning about Systems Using Machine Learning:Towards More Data-Driven Feedback Loops<br></div><div><div>Authors:<br></div><div>Mahmoud Elbattah and Owen Molloy</div><div>National University of Ireland Galway</div></div><div>Paper presented at Winter Simulation Conference 2017</div><div><br></div><div>Abstract:</div><div><div><div><div>Machine Learning (ML) has demonstrated great potentials for constructing new knowledge, or improving already established knowledge. Reflecting this trend, the paper lends support to the discussion of why and how should ML support the practice of modeling and simulation? Subsequently, the study goes through a use case in relation to healthcare, which aims to provide a practical perspective for integrating...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
We are ever aware of the global impact of infectious disease transmission in shaping the reality of ...
Machine learning methods are widely used within the medical field. However, the reliability and effi...
Recent trends towards data-driven methods may require a substantial rethinking of the process of dev...
Source:Learning about Systems Using Machine Learning:Towards More Data-Driven Feedback LoopsIn Proce...
<div>Presented at ACM 2018 Conference on Principles of Advanced Discrete Simulation (PADS)<br></div>...
Presented at Winter Simulation Conference 2018, Gothenburg, SwedenAuthors:Mahmoud Elbattah, Owen Mol...
Poster presented at Sixth European Business Intelligence & Big Data Summer School (eBISS 2016)Unive...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
Knowledge acquisition for an understanding of discrete event simulation systems is a difficult task....
The development of care pathways is increasingly becoming an instrumental artefact towards improving...
Interactive learning environments have been identified as promising technologies to improve teaching...
In this paper, we describe the combination of machine learning and simulation towards a hybrid model...
System Dynamics (SD) is an approach to study the nonlinear behaviour of complex systems over time. S...
We are surrounded by data in our daily lives. The rent of our houses, the amount of electricity unit...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
We are ever aware of the global impact of infectious disease transmission in shaping the reality of ...
Machine learning methods are widely used within the medical field. However, the reliability and effi...
Recent trends towards data-driven methods may require a substantial rethinking of the process of dev...
Source:Learning about Systems Using Machine Learning:Towards More Data-Driven Feedback LoopsIn Proce...
<div>Presented at ACM 2018 Conference on Principles of Advanced Discrete Simulation (PADS)<br></div>...
Presented at Winter Simulation Conference 2018, Gothenburg, SwedenAuthors:Mahmoud Elbattah, Owen Mol...
Poster presented at Sixth European Business Intelligence & Big Data Summer School (eBISS 2016)Unive...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
Knowledge acquisition for an understanding of discrete event simulation systems is a difficult task....
The development of care pathways is increasingly becoming an instrumental artefact towards improving...
Interactive learning environments have been identified as promising technologies to improve teaching...
In this paper, we describe the combination of machine learning and simulation towards a hybrid model...
System Dynamics (SD) is an approach to study the nonlinear behaviour of complex systems over time. S...
We are surrounded by data in our daily lives. The rent of our houses, the amount of electricity unit...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
We are ever aware of the global impact of infectious disease transmission in shaping the reality of ...
Machine learning methods are widely used within the medical field. However, the reliability and effi...