This work is licensed under the Creative Commons Attribution 4.0 International License.
Xiaodong, He, Li, et al. (2017). Deep Learning for Image-to-Text Generation: A Technical Overview. IEEE Signal Processing Magazine.Search in Google Scholar
Gupta, V., Jain, N., Katariya, P., et al. (2021). An Emotion Care Model using Multimodal Textual Analysis on COVID-19. Chaos, Solitons & Fractals, 144.Search in Google Scholar
Curt, C. (2020). Multirisk: What trends in recent works? – A bibliometric analysis. Science of The Total Environment, 763(5), 142951.Search in Google Scholar
Mei, Hong. (2016). The changing columns of Reader magazine and its revelations. Media Broadview, (01).Search in Google Scholar
Manchaiah, V., Swanepoel, D. W., Bennett, R. J. (2021). Online Consumer Reviews on Hearing Health Care Services: A Textual Analysis Approach to Examine Psychologically Meaningful Language Dimensions. American Journal of Audiology, 1-7.Search in Google Scholar
Darmon, A., Bazzi, M., Howison, S. D., et al. (2020). Pull out all the stops: Textual analysis via punctuation sequences. European Journal of Applied Mathematics, 1-37.Search in Google Scholar
Zhang, Zufan, Zou, et al. (2018). Textual sentiment analysis via three different attention convolutional neural networks and cross-modality consistent regression. Neurocomputing.Search in Google Scholar
Kumar, A., Srinivasan, K., Cheng, W. H., et al. (2020). Hybrid context enriched deep learning model for fine-grained sentiment analysis in textual and visual semiotic modality social data. Information Processing & Management, 57(1), 102141.1-102141.25.Search in Google Scholar
Wu, X., & Fitzgerald, R. (2021). 'Hidden in plain sight': Expressing political criticism on Chinese social media. Discourse Studies, 23(3), 365-385.Search in Google Scholar
Bucci, F., Romelli, K., Vanheule, S. (2022). Lacanian discourse analysis and emotional textual analysis compared: New proposals on articulating psychoanalysis and psychosocial studies. Psychoanalysis, Culture & Society, 27(2), 163-180.Search in Google Scholar
Umer, M., Sadiq, S., Missen, M., et al. (2021). Scientific Papers Citation Analysis using Textual Features and SMOTE Resampling Techniques. Pattern Recognition Letters, 150(1).Search in Google Scholar
Peng, A. Y. (2021). Neoliberal feminism, gender relations, and a feminized male ideal in China: A critical discourse analysis of Mimeng’s WeChat posts. Feminist Media Studies, 21(1), 115-131.Search in Google Scholar
Aydin-Düzgit, S., Rumelili, B. (2019). Discourse analysis: Strengths and shortcomings. All Azimuth: A Journal of Foreign Policy and Peace, 8(2), 285-305.Search in Google Scholar
Jacobs, T., Tschötschel, R. (2019). Topic models meet discourse analysis: a quantitative tool for a qualitative approach. International Journal of Social Research Methodology, 22(5), 469-485.Search in Google Scholar
Anderson, K. T., Holloway, J. (2020). Discourse analysis as theory, method, and epistemology in studies of education policy. Journal of Education Policy, 35(2), 188-221.Search in Google Scholar
Da Cunha, I., Montané, M. A. (2020). A corpus-based analysis of textual genres in the administration domain. Discourse Studies, 22(1), 3-31.Search in Google Scholar
Setyono, B., Widodo, H. P. (2019). The representation of multicultural values in the Indonesian Ministry of Education and Culture-Endorsed EFL textbook: a critical discourse analysis. Intercultural Education, 30(4), 383-397.Search in Google Scholar
Stefanovic, P., & Kurasova, O. (2022). Approach for multi-label text data class verification and adjustment based on self-organizing map and latent semantic analysis. Informatica.Search in Google Scholar
PF Vinué, Bringas, P. G. (2020). On the Probabilistic Latent Semantic Analysis Generalization as the Singular Value Decomposition Probabilistic Image. Journal of Statistical Theory and Applications.Search in Google Scholar
Srinivasarao, U., Sharaff, A. (2022). Email thread sentiment sequence identification using PLSA clustering algorithm. Expert Systems with Applications.Search in Google Scholar
Tatsumi, K., Tsujioka, S., Masui, R., Kusunoki, Y., & Yun, Y. (2022). Determination of reinforcement degrees in constructing large-scale structures by using multiclass support vector machines. Knowledge-based Systems, (Aug. 5), 249.Search in Google Scholar