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You searched IISERK - Title: Prentice Hall molecular model set for general and organic chemistry [model].
Tag In 1 In 2 Data
001  vtls000037253
003  IISER-K
005  20220801113100.0
007  cr nn 008mamaa
008  220801s2021 sz | s |||| 0|eng d
020  \a 9783030832131 \9 978-3-030-83213-1
035  \a (DE-He213)978-3-030-83213-1
039 9\y 202208011131 \z Siladitya
050 4\a Q325.5-.7
08204\a 006.31 \2 23
1001 \a Diveev, Askhat. \e author. \4 aut \4 http://id.loc.gov/vocabulary/relators/aut
24510\a Machine Learning Control by Symbolic Regression \h [electronic resource] / \c by Askhat Diveev, Elizaveta Shmalko.
250  \a 1st ed. 2021.
264 1\a Cham : \b Springer International Publishing : \b Imprint: Springer, \c 2021.
300  \a IX, 155 p. 55 illus., 19 illus. in color. \b online resource.
336  \a text \b txt \2 rdacontent
337  \a computer \b c \2 rdamedia
338  \a online resource \b cr \2 rdacarrier
347  \a text file \b PDF \2 rda
5050 \a 1.Introduction -- 2.Mathematical Statements of MLC Problems -- 3.Numerical Solution of Machine Learning Control Problems -- 4.Symbolic Regression Methods -- 5.Examples of MLC Problem Solutions.
520  \a This book provides comprehensive coverage on a new direction in computational mathematics research: automatic search for formulas. Formulas must be sought in all areas of science and life: these are the laws of the universe, the macro and micro world, fundamental physics, engineering, weather and natural disasters forecasting; the search for new laws in economics, politics, sociology. Accumulating many years of experience in the development and application of numerical methods of symbolic regression to solving control problems, the authors offer new possibilities not only in the field of control automation, but also in the design of completely different optimal structures in many fields. For specialists in the field of control, Machine Learning Control by Symbolic Regression opens up a new promising direction of research and acquaints scientists with the methods of automatic construction of control systems. For specialists in the field of machine learning, the book opens up a new, much broader direction than neural networks: methods of symbolic regression. This book makes it easy to master this new area in machine learning and apply this approach everywhere neural networks are used. For mathematicians, the book opens up a new approach to the construction of numerical methods for obtaining analytical solutions to unsolvable problems; for example, numerical analytical solutions of algebraic equations, differential equations, non-trivial integrals, etc. For specialists in the field of artificial intelligence, the book offers a machine way to solve problems, framed in the form of analytical relationships.
650 0\a Machine learning.
650 0\a Artificial intelligence.
650 0\a System theory.
650 0\a Control theory.
650 0\a Control Engineering.
650 0\a Robotics.
650 0\a AUTOMATION.
650 0\a Multiagent systems.
65014\a Machine Learning.
65024\a Symbolic AI.
65024\a Systems Theory, Control.
65024\a Control and Systems Theory.
65024\a Control, Robotics, Automation.
65024\a Multiagent Systems.
7001 \a Shmalko, Elizaveta. \e author. \4 aut \4 http://id.loc.gov/vocabulary/relators/aut
7102 \a SpringerLink (Online service)
7730 \t Springer Nature eBook
77608\i Printed edition: \z 9783030832124
77608\i Printed edition: \z 9783030832148
77608\i Printed edition: \z 9783030832155
85640\u https://doi.org/10.1007/978-3-030-83213-1
912  \a ZDB-2-SMA
912  \a ZDB-2-SXMS
950  \a Mathematics and Statistics (SpringerNature-11649)
950  \a Mathematics and Statistics (R0) (SpringerNature-43713)

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