AI Research Navigation - A Scholarly Journey
Keywords:
Artificial Intelligence, Machine Learning, Deep Learning, Neural Networks, Data Mining, Natural Language Processing (NLP), Computer VisionSynopsis
The expanse of AI has flourished into a foundation for contemporary research which influences many fields in computer science. However, the scope of AI has led to enormous number of challenges for foundation theory of any innovation. The AI Research Navigation; A Scholarly journey book sets one’s sight on imparting systematic and organized perspective on AI related research. The book is intended for providing academicians and researchers not just a glimpse of AI but a detailed description of case studies in the relevant field for further research expansion. The intention of authors is not just navigating through different perspectives of Artificial intelligence but to cultivate an interest in readers the potential to interrogate, associate and contribute sensibly to unravel the story of Artificial intelligence.
References
M. Frize and R. Walker, “Clinical decision-support systems for intensive care units using case-based reasoning”, Medical engineering & physics, 22(9):671-677, 2006.
Oana Frunza, Diana Inkpen, and Thomas Tran, “A Machine Learning Approach for Identifying Disease-Treatment Relations in Short Texts”, IEEE, VOL. 23, NO. 6, JUNE 2011.
M.M.Abbasi, S. Kashiyarndi, “Clinical Decision Support Systems: A discussion on different methodologies used in Health Care”, International Journal of Computer Science and Information Security, Vol. 8, No. 4, 2010
Avrilia Floratou, Sandeep Tata, and Jignesh M. Patel, Member, IEEE , “Efficient and Accurate Discovery of Patterns in Sequence Data Sets” , IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, VOL. 23, NO. 8, AUGUST 2011.
T. Mitsumori, M. Murata, Y. Fukuda, K. Doi, and H. Doi, “Extracting Protein-Protein Interaction Information from Biomedical Text with SVM,” IEICE Trans. Information and Systems, vol. E89D, no. 8, pp. 2464-2466, 2006.
P. Patel, E. Keogh, J. Lin, and S. Lonardi, “Mining Motifs in Massive Time Series Databases”, Proc. IEEE Int’l Conf. Data Mining (ICDM), pp. 370-377, 2002.
A.Khan, J. Doucette, C. Jin, L. Fu, and R. Cohen, “An ontological approach to data mining for emergency medicine”, In 2011 Northeast Decision Sciences Institute Conference Proceedings 40th Annual Meeting, pages 578{594, Montreal, Quebec, Canada, April 2011.
