Preview

Accounting. Analysis. Auditing

Advanced search

Whether it is worth Being Fond of Big Data?

https://doi.org/10.26794/2408-9303-2020-7-2-17-29

Abstract

The paper considers the analysis of the development of artificial intelligence systems. There were methods of analysis, comparison and deduction applied. Despite important achievements at the solution of some private tasks and big financing, the industry in general faces serious problems of development. Already in the nearest future the shortage of computing power will become serious restriction of deep machine learning. A review of literature showed that the commercialization of artificial intelligence and big data negatively affects the solution of fundamental problems in the industry development. The author shows that priorities of developers of systems of artificial intelligence are more and more displaced towards realization of simple consumer services while the solution of tasks, really important for all mankind, is not implemented. Dangers of misunderstanding by people of mechanisms of decisions development are revealed by intellectual computer systems. It is specified the signs allowing to assume possibility of global economic problems because of the developing pessimism of investors concerning prospects of the companies engaged in this field. The principal results of the study are recommended to specialists in the development of artificial intelligence systems as a part of a big data creation.

About the Author

E. L. Shuremov
International Innovative University
Russian Federation

Evgenii L. Shuremov — Dr. Sci. (Econ.), Professor, Head of the Department of Information Technologies

Sochi



References

1. Rassel_S., Norvig_P. Artificial intelligence: A modern approach. Transl. from Eng. Moscow: LLC P. H. Williams; 2016. 1408 p. (In Russ.). ISBN 978–5–8459–1968–7.

2. Barrat J. Our final invention. Artificial intelligence and the end of the human Era. Transl. from Eng. Moscow: Alpina non-fiction; 2015. 304 p. (In Russ.). ISBN 978–5–9167–1436–4.

3. Luger G. F. Artificial intelligence. Structures and strategies for complex problem solving. Transl. from Eng. St. Petersburg: Williams; 2005. 864 p. (In Russ.). ISBN 5–8459–0437–4.

4. Potapov A. S. Artificial intelligence and universal thinking. St. Petersburg: Polytechnic; 2012. 711 p. (In Russ.).

5. Turing A. M. Computing machinery and intelligence. Transl. from Eng. Moscow: AST Publishing House; 2018. 128 p. (In Russ.). ISBN 978–5–17–105970–5.

6. Turing A. M. Can the machine think? Transl. from Eng. Moscow: Editorial URSS; 2016. 128 p. (In Russ.). ISBN 978–5–9710–2758–4.

7. Nikolenko S. I., Kadurin A. A., Arkhangel’skaya E. V. Deep learning. Immersion in the world of neural networks. St. Petersburg: Piter; 2018. 480 p. (In Russ.). ISBN 978–5–496–02536–2.

8. Chomsky N., Bervic R. Why only us: Language and evolution. Transl. from Eng. St. Petersburg: Piter; 2018. 287 p. (In Russ.). ISBN 978–5–496–02939–1.

9. Chomsky N. On nature and language. Cambridge: Cambridge University Press; 2002. 218 р.

10. Chomsky N. Three models for the description of language. IRE Transactions on Information Theory. 1956;(2):113–124.

11. Norvig P. On Chomsky and the two cultures of statistical learning. In: Pietsch W., Wernecke J., Ott M., eds. Berechenbarkeit der Welt? Springer VS, Wiesbaden. DOI: 10.1007/978–3–658–12153–2_3

12. Domingos P. The master algorithm. How the quest for the ultimate learning machine will remake our world. Transl. from Eng. Moscow: MIF Publishing House; 2016. 336 p. (In Russ.). ISBN 978–5–00100–172-0.

13. Bostrom N. Superintelligence. Paths, dangers, strategies. Transl. from Eng. Moscow: MIF Publishing House; 2016. 100 p. (In Russ.). ISBN 978–5–00057–810–0.

14. Brink H., Richards J., Fetherolf M. Real-world machine learning. Transl. from Eng. St. Petersburg: Piter; 2017. 336 с. (In Russ.). ISBN 978–5–496–02989–6.


Review

For citations:


Shuremov E.L. Whether it is worth Being Fond of Big Data? Accounting. Analysis. Auditing. 2020;7(2):17-29. (In Russ.) https://doi.org/10.26794/2408-9303-2020-7-2-17-29

Views: 724


Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.


ISSN 2408-9303 (Print)
ISSN 2619-130X (Online)