This work is licensed under the Creative Commons Attribution 4.0 International License.
Dragoni, M., Poria, S., & Cambria, E. (2018). Ontosenticnet: a commonsense ontology for sentiment analysis. IEEE Intelligent Systems.Search in Google Scholar
Poria, S., Cambria, E., Bajpai, R., & Hussain, A. (2017). A review of affective computing. Information Fusion.Search in Google Scholar
Dashtipour, K., Gogate, M., Cambria, E., & Hussain, A. (2021). A novel context-aware multimodal framework for persian sentiment analysis. Neurocomputing.Search in Google Scholar
Spitzer, M. (2013). “but emotion is the problem … !” response to james o. young. opera quarterly, 29(3), 302-306.Search in Google Scholar
Rachele, S., Sara, T., Alessandro, M., & Giovanni, M. (2016). Towards sentiment analysis for historical texts. Digital Scholarship in the Humanities(4), 4.Search in Google Scholar
Neviarouskaya, A., Prendinger, H., & Ishizuka, M. (2011). Sentiful: a lexicon for sentiment analysis. IEEE Transactions on Affective Computing, 2(1), 22-36.Search in Google Scholar
Kim, H. (2021). Lux: smart mirror with sentiment analysis for mental comfort. Sensors, 21.Search in Google Scholar
SANDRA, KüBLER, CAN, LIU, ZEESHAN, & ALI, et al. (2018). To use or not to use: feature selection for sentiment analysis of highly imbalanced data ?. Natural Language Engineering.Search in Google Scholar
Clemens, & Risi. (2011). Opera in performance—in search of new analytical approaches. Opera Quarterly.Search in Google Scholar
Zbikowski, L. M. (2011). Music, emotion, analysis. Music Analysis, 29(1‐3), 37-60.Search in Google Scholar
Liu, Q., Huang, Y., Yang, Q., Peng, H., & Wang, J. (2023). An attention-aware long short-term memory-like spiking neural model for sentiment analysis. International journal of neural systems, 2350037.Search in Google Scholar
Yoonjung, Cho, Janyce, Wiebe, Rada, & Mihalcea. (2017). Coarse-grained +/− effect word sense disambiguation for implicit sentiment analysis. IEEE Transactions on Affective Computing, 8(4), 471-479.Search in Google Scholar
Napier, K., & Shamir, L. (2018). Quantitative sentiment analysis of lyrics in popular music. Journal of Popular Music Studies, 30(4), 161-176.Search in Google Scholar
Wellington, A. (2015). On emotions: philosophical essays. The Philosophical Quarterly.Search in Google Scholar
Akhtar, S., Ghosal, D., Ekbal, A., Bhattacharyya, P., & Kurohashi, S. (2019). All-in-one: emotion, sentiment and intensity prediction using a multi-task ensemble framework. IEEE Transactions on Affective Computing, PP(99), 1-1.Search in Google Scholar
Nazir, A., Rao, Y., Wu, L., & Sun, L. (2020). Issues and challenges of aspect-based sentiment analysis: a comprehensive survey. IEEE Transactions on Affective Computing, PP(99), 1-1.Search in Google Scholar