Applying combinatorial neural model for vegetable production management Online publication date: Fri, 02-Sep-2011
by Edilson Ferneda, Hercules Antonio Do Prado, Ricardo Coelho De Faria
International Journal of Reasoning-based Intelligent Systems (IJRIS), Vol. 3, No. 2, 2011
Abstract: This paper presents a study on the effects of the combination of different vegetables and some socio-economic variables in the economic results of the carrot cropping. Experts recognise that some combinations of cropping can produce synergistic effects that can lead to profits or losses, depending on the factors of production involved. However, the analysis of the results of cropping multiple varieties simultaneously involves a space of possibilities whose treatment is not trivial. Among the alternatives available for analysing such a problem, this study explored the Combinatorial Neural Model (CNM) which ensures the generation of hypotheses for all possible combinations, according to the parameters set to the model. The study is based on data collected from farms in Brasilia, Brazil. First, a preprocessing on the data is presented in order to provide information on the data nature and distribution, and some univariate and bi-dimensional analysis is shown. Next, the results generated by CNM are explored and the research limits and future work are discussed.
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