Burcu AkinIkbal Ece DizbaySevkinaz GumusogluErcin GuducuAkin, BurcuGuducu, ErcinDizbay, Ikbal EceGumusoglu, Sevkinaz2025-10-0620181303-099X10.21121/eab.2018442988http://dx.doi.org/10.21121/eab.2018442988https://gcris.yasar.edu.tr/handle/123456789/6479https://doi.org/10.21121/eab.2018442988To be able to make appropriate actions during buying selling or holding decisions economic actors need accurate commodity price forecasts. This study focuses on forecasting raisin price by using predetermined volatile variables. Therefore we seek for answers of three main questions. Do the social & political issues effect raisin price in countries that have internal disturbance? By using volatile variables can we represent or predict price index thoroughly? Lastly which method has the best prediction performance, Artificial Neural Networks (ANN) Decision Tree or Support Vector Machine (SVM)? In accordance with these purposes ANN decision tree and SVM methods are implemented for proposed model and their prediction performances are compared. Experimental results showed that accuracy performance of SVM method was found significantly better than ANN method and decision tree.Englishinfo:eu-repo/semantics/closedAccessCommodity market, Artificial neural networks, Decision tree, Support vector machines, Social & political issuesNEURAL-NETWORK, TIME-SERIES, OIL, GOLD, PREDICTION, MARKET, FOOD, USArtificial Neural NetworksDecision TreeSupport Vector MachinesCommodity MarketSocial & Political IssuesForecasting the Direction of Agricultural Commodity Price Index through ANN SVM and Decision Tree: Evidence from RaisinArticle