Machine learning techniques in disease forecasting: a case study on rice blast prediction
Abstract
Background
Diverse modeling approaches
Results
Six significant weather variables were selected as predictor variables. Two series of models (cross-location and cross-year) were developed and validated using a five-fold cross validation procedure. For cross-year models, the conventional multiple regression (REG) approach achieved an average correlation coefficient (
Conclusion
Our case study demonstrated that SVM is better than existing machine learning techniques and conventional REG approaches in forecasting plant diseases. In this direction, we have also developed a SVM-based web server for rice blast prediction, a first of its kind worldwide, which can help the plant science community and farmers in their decision making process. The server is freely available at
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s2006machinebmc
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Authors | S, Kapoor Amar;Rakesh, Kaundal;PS, Raghava Gajendra; |
Journal | BMC Bioinformatics |
Year | 2006 |
DOI | DOI not found |
URL | |
Keywords | Keywords not found |
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