In sensory analysis a panel of assessors gives scores to blocks of sensory attributes for profiling products, thus yielding a three-way table crossing assessors, attributes and products. In this context, it is important to evaluate the panel performance as well as to synthesize the scores into a global assessment to investigate differences between products. Recently, a combined approach of fuzzy regression and PLS path modeling has been proposed. Fuzzy regression considers crisp/fuzzy variables and identifies a set of fuzzy parameters using optimization techniques. In this framework, the present work aims to show the advantages of fuzzy PLS path modeling in the context of sensory analysis
Fuzzy regression models are useful for investigating the relationship between explanatory variables ...
We propose an unconstrained global continuous optimization method based on tabu search and harmony s...
While there are many different comput+tional modeling techniques capable of predicting human decisio...
In sensory analysis a panel of assessors gives scores to blocks of sensory attributes for profiling ...
Sensory evaluation plays an important role in the quality control of food productions. Sensory data ...
Partial Least Squared (PLS) regression is a model linking a dependent variable y to a set of X (nume...
Structural equation models (SEM) are reference techniques for measuring cause-effect relationships i...
In many real-world applications, the quality of a process or a particular product can be characteriz...
This paper deals with fuzzy regression analysis in presence of multivariate symmetric fuzzy response...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
[[abstract]]Sensory evaluation is an essential need for accepting processed food products having des...
One of the problems in analyzing sensory profiling data is to handle the systematic individual diffe...
Linear Programming (LP) methods are commonly used to construct fuzzy linear regression (FLR,) models...
In this paper a regression model is employed for fuzzy data of approximately S shape type. In other ...
Structural equation models are reference techniques for measuring cause-effect relationships in comp...
Fuzzy regression models are useful for investigating the relationship between explanatory variables ...
We propose an unconstrained global continuous optimization method based on tabu search and harmony s...
While there are many different comput+tional modeling techniques capable of predicting human decisio...
In sensory analysis a panel of assessors gives scores to blocks of sensory attributes for profiling ...
Sensory evaluation plays an important role in the quality control of food productions. Sensory data ...
Partial Least Squared (PLS) regression is a model linking a dependent variable y to a set of X (nume...
Structural equation models (SEM) are reference techniques for measuring cause-effect relationships i...
In many real-world applications, the quality of a process or a particular product can be characteriz...
This paper deals with fuzzy regression analysis in presence of multivariate symmetric fuzzy response...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
[[abstract]]Sensory evaluation is an essential need for accepting processed food products having des...
One of the problems in analyzing sensory profiling data is to handle the systematic individual diffe...
Linear Programming (LP) methods are commonly used to construct fuzzy linear regression (FLR,) models...
In this paper a regression model is employed for fuzzy data of approximately S shape type. In other ...
Structural equation models are reference techniques for measuring cause-effect relationships in comp...
Fuzzy regression models are useful for investigating the relationship between explanatory variables ...
We propose an unconstrained global continuous optimization method based on tabu search and harmony s...
While there are many different comput+tional modeling techniques capable of predicting human decisio...