Adaptation, Machine Learning, and the Immune System: A Review Paper
DOI:
https://doi.org/10.55524/Keywords:
Adaptation, Controller, Data Set, Immune System, Machine learningAbstract
The immunologic system is a critical dynamic system whose goal it is to detect and eliminate foreign matter. In order to do any of this, this must be able to tell the difference across much particles (or antigens) and the particles self. The cells are able to perceive, learn, and retain patterns. By employing techniques of genetic engineering on a temporal scale fast enough seeing practically, the immune system may recognize novel forms need preprogramming. We give a good dynamical body's classification based on Jerne's phone system hypothesis that is simple to execute on a web page. This terminology is similar to Yorkshire's classification algorithm, a teaching students and computational tool. We explain how discrete - time systems may be used to describe simple releases of the algorithm is proposed, and we go through the immune and classifier systems in depth. We aim to learn more about how they do particular tasks by comparing them, as well as propose new methods that may be useful in learning systems.
Downloads
References
Wuest T, Weimer D, Irgens C, Thoben KD. Machine learning in manufacturing: Advantages, challenges, and applications. Prod Manuf Res. 2016;
Handelman GS, Kok HK, Chandra R V., Razavi AH, Lee MJ, Asadi H. eDoctor: machine learning and the future of medicine. Journal of Internal Medicine. 2018.
Qiu J, Wu Q, Ding G, Xu Y, Feng S. A survey of machine learning for big data processing. Eurasip Journal on Advances in Signal Processing. 2016.
Lary DJ, Alavi AH, Gandomi AH, Walker AL. Machine learning in geosciences and remote sensing.
Geosci Front. 2016;
Schuld M, Sinayskiy I, Petruccione F. An introduction to quantum machine learning. Contemp Phys. 2015; [6] Camacho DM, Collins KM, Powers RK, Costello JC,
Collins JJ. Next-Generation Machine Learning for Biological Networks. Cell. 2018.
Kohli M, Prevedello LM, Filice RW, Geis JR. Implementing machine learning in radiology practice and research. American Journal of Roentgenology. 2017.
Burrell J. How the machine ‘thinks’: Understanding opacity in machine learning algorithms. Big Data Soc. 2016;
Giger ML. Machine Learning in Medical Imaging. J Am Coll Radiol. 2018;
Kavakiotis I, Tsave O, Salifoglou A, Maglaveras N, Vlahavas I, Chouvarda I. Machine Learning and Data Mining Methods in Diabetes Research. Computational and Structural Biotechnology Journal. 2017.