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. 2020 Sep 21;7(1):10. doi: 10.1186/s40708-020-00109-x

Table 4.

Comparative accuracy analysis for machine learning classifiers in Neuromarketing

Classifiers Neuromarketing studies Average accuracy
Support Vector Machine (SVM) Like/dislike classification for esthetic preference recognition among 3D objects (Chew et al.) [17] 68%
Attention bias identification between targeted and non-targeted stimuli using NeoCube-based SNN architecture (Doborjeh et al.) [64] 48.5%
Like/dislike classification among e-commerce product (Yadava et al.) [18] 62.85%
Emotional valence recognition between excitement and boredom using EEG device and combining SVM, KNN, SVR, LR (Ogino and Mitsukura) [68] 72.4%
Purchase decision prediction from fMRI data using recursive cluster elimination-based support vector machine (RCE-SVM) (Wang et al.) [30] 55.70%
Facial emotion recognition using GSR sensor biometric data (Goyal and Singh) [54] 81.65%
Seven-emotion recognition using EEG signal (Bhardwaj et al.). Happiness and sadness classification accuracy reported here, respectively 87.5%, 92.5%
Color classification using EEG signal (Rakshit et al.) 78.81%
K-Nearest Neighbor (KNN) Like/dislike classification for esthetic preference recognition among 3D objects (Chew et al.) [17] 64%
Hidden Markov model (HMM) Like/dislike classification among e-commerce product (Yadava et al.) [18]. Classification accuracy reported for male and female subject, respectively 70.33%, 63.56%
Linear discriminant analysis (LDA) Seven-emotion recognition using EEG signal (Bhardwaj et al.) [58]. Happiness and sadness classification accuracy reported here, respectively 82.5, 87.5%
Like-/dislike classification using car stimuli and ERP signal (Wreissenger et al.) 61%
Naïve Bayes Purchase decision prediction using Neural Impulse Actuator (NIA) device (Taqwa et al.) [73] 48.5%
Artificial Neural Network Consumer gender prediction using facial action coding (Gurbuj and Toga) [28] 83.8%
TV advertisement liking recognition using EEG signal (Soria Morillo et al.) [43] 80%
TV advertisement liking recognition using EEG (Soria Morillo et al.) [40] 80%
Like/dislike classification among e-commerce products (Yadava et al.) [18] 60%