Accès libre

Emotional Computing Technology Applications in Information Systems Security and Their Risk Prevention

À propos de cet article

Citez

Wagenknecht, & Susann. (2017). The evocative object-introspection and emotional reflection through computer use. Interacting with computers. Search in Google Scholar

Cheng-Hung, Wang, Hao-Chiang, Koong, & Lin. (2018). Emotional design tutoring system based on multimodal affective computing techniques. International journal of distance education technologies: An official publication of the Information Resources Management Association: IJDET, 16(1), 103-117. Search in Google Scholar

Chen, Y. (2023). Design and simulation of ai remote terminal user identity recognition system based on reinforcement learning. International Journal of Modeling, Simulation, and Scientific Computing, 14(01). Search in Google Scholar

Zhou, K., Sisman, B., Rana, R., Schuller, B. W., & Li, H. (2023). Emotion intensity and its control for emotional voice conversion. IEEE transactions on affective computing. Search in Google Scholar

Sun, X., Ye, J., & Ren, F. (2016). Detecting influenza states based on hybrid model with personal emotional factors from social networks. Neurocomputing, 210(OCT.19), 257-268. Search in Google Scholar

Zhou, Q., Ji, D., Ren, Y., & Tang, H. (2021). Dual-copying mechanism and dynamic emotion dictionary for generating emotional responses. Neurocomputing, 454(3–4). Search in Google Scholar

Naoki, Masuyama, Chu, Kiong, Loo, & Manjeevan, et al. (2018). Personality affected robotic emotional model with associative memory for human-robot interaction. Neurocomputing. Search in Google Scholar

Provost, E. M., Shangguan, Y., & Busso, C. (2017). Umeme: university of michigan emotional mcgurk effect data set. IEEE Transactions on Affective Computing, 6(4), 395-409. Search in Google Scholar

Baghbani, F., Akbarzadeh-T, M. R., & Sistani, M. B. N. (2021). Cooperative adaptive emotional neuro-control for a class of higher-ordered heterogeneous uncertain nonlinear multi-agent systems. Neurocomputing. Search in Google Scholar

Wu, C. H., & Liang, W. B. (2015). Emotion recognition of affective speech based on multiple classifiers using acoustic-prosodic information and semantic labels (extended abstract). IEEE transactions on affective computing. Search in Google Scholar

Akt, E., Karwowski, W., & Servi, L. (2020). Application of soft computing techniques for estimating emotional states expressed in twitter (r) time series data. Neural computing & applications(8), 32. Search in Google Scholar

Hsieh, Y. Z., Lin, S. S., Luo, Y. C., Jeng, Y. L., Tan, S. W., & Chen, C. R., et al. (2020). Arcs-assisted teaching robots based on anticipatory computing and emotional big data for improving sustainable learning efficiency and motivation. Sustainability, 12. Search in Google Scholar

Jesús B. Alonso, Josué Cabrera, Medina, M., & Travieso, C. M. (2015). New approach in quantification of emotional intensity from the speech signal: emotional temperature. Expert Systems with Applications, 42( 24), 9554-9564. Search in Google Scholar

Liu, M., Bao, X., Liu, J., Zhao, P., & Shen, Y. (2021). Generating emotional response by conditional variational auto-encoder in open-domain dialogue system. Neurocomputing, 460(2). Search in Google Scholar

Guerrero Razuri, J. F. (2015). Decisional-emotional support system for a synthetic agent : influence of emotions in decision-making toward the participation of automata in society. j radiol electrol arch electr medicale, 189(3), 915-929. Search in Google Scholar

Ling, W., Gongliang, H., & Tiehua, Z. (2018). Semantic analysis of learners’ emotional tendencies on online mooc education. Sustainability, 10(6), 1921-. Search in Google Scholar

Chen, C. (2021). An analysis of mandarin emotional tendency recognition based on expression spatiotemporal feature recognition. International Journal of Biometrics(2/3), 13. Search in Google Scholar

Wang, L., Bai, S., & Wang, D. (2019). Emotional tendency recognition of self-media contents based on word relevance multidimensional time series. Basic & clinical pharmacology & toxicology.(S9), 125. Search in Google Scholar

eISSN:
2444-8656
Langue:
Anglais
Périodicité:
Volume Open
Sujets de la revue:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics