@article{article_288871, title={Emotion Recognition via Galvanic Skin Response: Comparison of Machine Learning Algorithms and Feature Extraction Methods}, journal={IU-Journal of Electrical & Electronics Engineering}, volume={17}, pages={3147–3156}, year={2017}, author={Ayata, Deger and Yaslan, Yusuf and Kamaşak, Mustafa}, keywords={Biomedical Signal Processing,Emotion Recognition,Pattern Recognition,Machine Learning,Physiological Signal,Galvanic Skin Response,Decision Tree,Random Forest,k-Nearest Neighbors,Support Vector Machine}, abstract={<p class="Abstract" style="margin-top:0cm;margin-right:11.35pt;margin-bottom: 10.0pt;margin-left:8.5pt"> <span style="font-size: 10pt; letter-spacing: -0.05pt;">Emotions play a significant and powerful role in everyday life of human beings. Developing algorithms for computers to recognize emotional expression is widely studied area. </span> <span style="font-size: 10pt;">In this study, emotion recognition from  Galvanic Skin Response signals was performed using time domain, wavelet and empirical mode decomposition based features. Valence and arousal have been categorized and relationship between physiological signals and arousal and valence has been studied using k-Nearest Neighbors, Decision Tree, Random Forest and Support Vector Machine algorithms. We have achieved 81.81% and 89.29% accuracy rate for arousal and valence respectively.  </span> <span style="font-size: 10pt; letter-spacing: -0.05pt;"> <o:p> </o:p> </span> </p>}, number={1}, publisher={İstanbul Üniversitesi-Cerrahpaşa}