The behavior of components of protein plant is of vital importance for animals that consume them in their diet. The objective of this research is to evaluate regression algorithms, to determine the behavior of the expressions that best adapt to the procedures of a traditional laboratory and to estimate the chemical components of protein plants, in this sense the MULAN library of java has been used, that contain automatic learning algorithms capable of adapting to dissimilar problems. Three data set were created for each species treated in this study; each of these include the main elements to be evaluate in each experiment, these are delimitings by: secondary metabolites, cell wall components and digestibility element for training files one...
Artificial neural network models offer an alternative to linear regression analysis for predicting t...
This thesis is concerned with the prediction of protein mutations using artificial neural networks. ...
<p>All 20 foliar chemical and elemental properties measured for each tree sample (n = 238) were used...
The development of high-throughput measurement techniques resulted in rapidlyincreasing amounts of b...
Pearl millet has tolerance to harsh growing conditions such as drought. It is at least equivalent to...
Not AvailableMachine learning algorithms were employed for predicting the feed conversion efficiency...
which are biologically inspired tools, serve as an alternative to regression analysis for complex da...
This paper makes a comparison of machine learning algorithms for the analysis of four hydroponic dat...
Feed forward neural networks are compared with standard and new statistical classification procedure...
Background A moonlighting protein refers to a protein that can perform two or more functions. Since ...
The efficiency of a genetic algorithm is frequently assessed using a series of operators of evolutio...
Nonlinear programming and matrix methods of analysis were used to predict relative chemical composit...
National audienceThroughout evolution, bacteria have acquired the ability to sense variations of the...
Abstract: In phenotype prediction the physical characteristics of an organism are predicted from kno...
189–218 ppGrowth of artificial intelligence and machine learning (ML) methodology has been explosive...
Artificial neural network models offer an alternative to linear regression analysis for predicting t...
This thesis is concerned with the prediction of protein mutations using artificial neural networks. ...
<p>All 20 foliar chemical and elemental properties measured for each tree sample (n = 238) were used...
The development of high-throughput measurement techniques resulted in rapidlyincreasing amounts of b...
Pearl millet has tolerance to harsh growing conditions such as drought. It is at least equivalent to...
Not AvailableMachine learning algorithms were employed for predicting the feed conversion efficiency...
which are biologically inspired tools, serve as an alternative to regression analysis for complex da...
This paper makes a comparison of machine learning algorithms for the analysis of four hydroponic dat...
Feed forward neural networks are compared with standard and new statistical classification procedure...
Background A moonlighting protein refers to a protein that can perform two or more functions. Since ...
The efficiency of a genetic algorithm is frequently assessed using a series of operators of evolutio...
Nonlinear programming and matrix methods of analysis were used to predict relative chemical composit...
National audienceThroughout evolution, bacteria have acquired the ability to sense variations of the...
Abstract: In phenotype prediction the physical characteristics of an organism are predicted from kno...
189–218 ppGrowth of artificial intelligence and machine learning (ML) methodology has been explosive...
Artificial neural network models offer an alternative to linear regression analysis for predicting t...
This thesis is concerned with the prediction of protein mutations using artificial neural networks. ...
<p>All 20 foliar chemical and elemental properties measured for each tree sample (n = 238) were used...