Electroencephalograph (EEG) data is a recording of brain electrical activities, which is commonly used in emotion prediction. To obtain promising accuracy, it is important to perform a suitable data preprocessing; however, different works employed different procedures and features. In this paper, we aim to investigate various feature extraction techniques forEEG signals. To obtain the best choice, there are fourfactors investigatedin the experiment: (i) the number of channels, (ii) signal transformation methods, (iii) feature representations, and (iv) feature transformation techniques. Support Vector Machine (SVM) is chosen to be our baseline classifier due to its promising performance. The experimentswere conducted on the DEAP benchmark dataset. The results showed that the prediction on EEG signals from 10 channels represented by the bandpower oneminute features gave the best accuracy and F1.