The Academic Perspective Procedia publishes Academic Platform symposiums papers as three volumes in a year. DOI number is given to all of our papers.
Publisher : Academic Perspective
Journal DOI : 10.33793/acperpro
Journal eISSN : 2667-5862
[1] Sjarif, N.N.A., et al., SMS Spam Message Detection using Term Frequency-Inverse Document Frequency and Random Forest Algorithm. Procedia Computer Science, 2019. 161: p. 509-515.
[2] Nagwani, N.K. and A. Sharaff, SMS spam filtering and thread identification using bi-level text classification and clustering techniques. Journal of Information Science, 2017. 43(1): p. 75-87.
[3] Karasoy, O. and S. Ballı. Classification Turkish SMS with deep learning tool Word2Vec. in 2017 International Conference on Computer Science and Engineering (UBMK). 2017. Ieee.
[4] Uysal, A.K., et al., The impact of feature extraction and selection on SMS spam filtering. Elektronika ir Elektrotechnika, 2013. 19(5): p. 67-72.
[5] Ballı, S. and O. Karasoy, Development of content‐based SMS classification application by using Word2Vec‐based feature extraction. IET Software, 2019. 13(4): p. 295-304.
[6] Karasoy, O. and S. Ballı, Spam SMS detection for Turkish language with deep text analysis and deep learning methods. Arabian Journal for Science and Engineering, 2021: p. 1-17.
[7] Uysal, A.K., et al. A novel framework for SMS spam filtering. in 2012 International Symposium on Innovations in Intelligent Systems and Applications. 2012. IEEE.
[8] Uysal, A.K., et al. Detection of SMS spam messages on mobile phones. in 2012 20th Signal Processing and Communications Applications Conference (SIU). 2012. Ieee.
[9] Uysal, A.K., et al., The impact of feature extraction and selection on SMS spam filtering. Elektronika ir Elektrotechnika, 2012. 19(5): p. 67-72.
[10] Parlak, B. and A.K. Uysal, The effects of globalisation techniques on feature selection for text classification. Journal of Information Science, 2020: p. 0165551520930897.
[11] Uysal, A.K. and S. Gunal, The impact of preprocessing on text classification. Information Processing & Management, 2014. 50(1): p. 104-112.
[12] Bhowmick, A. and S.M. Hazarika, E-Mail Spam Filtering: A Review of Techniques and Trends, in Advances in Electronics, Communication and Computing. 2018, Springer. p. 583-590.
[13] Venkatraman, S., B. Surendiran, and P.A.R. Kumar, Spam e-mail classification for the internet of things environment using semantic similarity approach. The Journal of Supercomputing, 2020. 76(2): p. 756-776.
[14] Roy, P.K., J.P. Singh, and S. Banerjee, Deep learning to filter SMS spam. Future Generation Computer Systems, 2020. 102: p. 524-533.
[15] Li, P., et al., Bag-of-Concepts representation for document classification based on automatic knowledge acquisition from probabilistic knowledge base. Knowledge-Based Systems, 2020. 193: p. 105436.
[16] Salton, G. and C. Buckley, Term-weighting approaches in automatic text retrieval. Information processing & management, 1988. 24(5): p. 513-523.
[17] Schütze, H., C.D. Manning, and P. Raghavan, Introduction to information retrieval. Vol. 39. 2008: Cambridge University Press.
[18] Al-Anzi, F.S. and D. AbuZeina, Beyond vector space model for hierarchical Arabic text classification: A Markov chain approach. Information Processing & Management, 2018. 54(1): p. 105-115.
[19] Akın, A.A. and M.D. Akın, Zemberek, an open source NLP framework for Turkic languages. Structure, 2007. 10: p. 1-5.
[20] Forman, G., An extensive empirical study of feature selection metrics for text classification. Journal of machine learning research, 2003. 3(Mar): p. 1289-1305.
[21] Singh, S.R., H.A. Murthy, and T.A. Gonsalves, Feature Selection for Text Classification Based on Gini Coefficient of Inequality. Fsdm, 2010. 10: p. 76-85.
[22] Rehman, A., K. Javed, and H.A. Babri, Feature selection based on a normalized difference measure for text classification. Information Processing & Management, 2017. 53(2): p. 473-489.
[23] Parlak, B. and A.K. Uysal, A novel filter feature selection method for text classification: Extensive Feature Selector. Journal of Information Science, 2021: p. 0165551521991037.
[24] Zhao, L., et al. Semi-supervised Multinomial Naive Bayes for text classification by leveraging word-level statistical constraint. in Proceedings of the Thirtieth AAAI Conference on Artificial Intelligence. 2016. AAAI Press.
[25] Gabrilovich, E. and S. Markovitch. Text categorization with many redundant features: using aggressive feature selection to make SVMs competitive with C4. 5. in Proceedings of the twenty-first international conference on Machine learning. 2004. ACM.