An increasing number of publications present the joint application of design of experiments (DOE) and machine learning (ML) as a methodology to collect and analyze data on a specific industrial phenomenon. However, the literature shows that the choice of the design for data collection and model for data analysis is often not driven by statistical or algorithmic advantages, thus there is a lack of studies which provide guidelines on what designs and ML models to jointly use for data collection and analysis. This article discusses the choice of design in relation to the ML model performances. A study is conducted that considers 12 experimental designs, seven families of predictive models, seven test functions that emulate physical processes, ...
Machine learning is quickly becoming an important tool in modern materials design. Where many of its...
Experiments are widely used across multiple disciplines to uncover information about a system or pro...
Models need to be complex to cope with the complexity of today’s data. Model complexity arises in pa...
An increasing number of publications present the joint application of design of experiments (DOE) an...
Industrial statistics plays a major role in the areas of both quality management and innovation. How...
Machine Learning (ML), or the ability of self-learning computer algorithms to autonomously structure...
The recent increase in digitalization of industrial systems has resulted in a boost in data availabi...
The research aims to emphasise the relevance of the Design of Experiments (DOE) technique as a relia...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
Machine Learning (ML) models now inform a wide range of human decisions, but using ``black box'' mod...
Abstract: Experimental analysis starts with very similar premises: given a specific problem, we need...
Machine learning (ML) describes the ability of algorithms to structure and interpret data independen...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
<p>The original dataset was randomly split into an optimization and experimental datasets. The forme...
Experimental Design is the purposeful manipulation of inputs (factors) of a process so one can effic...
Machine learning is quickly becoming an important tool in modern materials design. Where many of its...
Experiments are widely used across multiple disciplines to uncover information about a system or pro...
Models need to be complex to cope with the complexity of today’s data. Model complexity arises in pa...
An increasing number of publications present the joint application of design of experiments (DOE) an...
Industrial statistics plays a major role in the areas of both quality management and innovation. How...
Machine Learning (ML), or the ability of self-learning computer algorithms to autonomously structure...
The recent increase in digitalization of industrial systems has resulted in a boost in data availabi...
The research aims to emphasise the relevance of the Design of Experiments (DOE) technique as a relia...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
Machine Learning (ML) models now inform a wide range of human decisions, but using ``black box'' mod...
Abstract: Experimental analysis starts with very similar premises: given a specific problem, we need...
Machine learning (ML) describes the ability of algorithms to structure and interpret data independen...
Many simulation practitioners can get more from their analyses by using the statistical theory on de...
<p>The original dataset was randomly split into an optimization and experimental datasets. The forme...
Experimental Design is the purposeful manipulation of inputs (factors) of a process so one can effic...
Machine learning is quickly becoming an important tool in modern materials design. Where many of its...
Experiments are widely used across multiple disciplines to uncover information about a system or pro...
Models need to be complex to cope with the complexity of today’s data. Model complexity arises in pa...