000 | 07810cam a2200853 i 4500 | ||
---|---|---|---|
001 | ocn813568123 | ||
003 | OCoLC | ||
005 | 20171113140734.0 | ||
006 | m o d | ||
007 | cr ||||||||||| | ||
008 | 121018s2013 enk ob 001 0 eng | ||
010 | _a 2012042679 | ||
020 |
_a9781118477748 _q(ePub) |
||
020 |
_a111847774X _q(ePub) |
||
020 |
_a9781118477809 _q(Adobe PDF) |
||
020 |
_a1118477804 _q(Adobe PDF) |
||
020 |
_a9781118477816 _q(MobiPocke) |
||
020 |
_a1118477812 _q(MobiPocke) |
||
020 |
_a9781118477793 _q(electronic bk.) |
||
020 |
_a1118477790 _q(electronic bk.) |
||
020 |
_z9781119944874 _q(hardback) |
||
020 | _z9781299188280 | ||
020 | _z1299188281 | ||
020 |
_z1119944872 _q(hardback) |
||
028 | 0 | 1 |
_aEB00063713 _bRecorded Books |
029 | 1 |
_aAU@ _b000050562216 |
|
029 | 1 |
_aAU@ _b000052162463 |
|
029 | 1 |
_aCHNEW _b000600026 |
|
029 | 1 |
_aDEBBG _bBV041432883 |
|
029 | 1 |
_aDEBSZ _b39747590X |
|
029 | 1 |
_aDEBSZ _b398288275 |
|
029 | 1 |
_aDEBSZ _b43133241X |
|
029 | 1 |
_aNZ1 _b15351000 |
|
029 | 1 |
_aNZ1 _b16175229 |
|
029 | 1 |
_aDEBSZ _b452512662 |
|
029 | 1 |
_aDEBBG _bBV043395134 |
|
035 |
_a(OCoLC)813568123 _z(OCoLC)827207583 _z(OCoLC)859157030 _z(OCoLC)864913652 _z(OCoLC)880597009 _z(OCoLC)966465300 |
||
037 |
_aCL0500000305 _bSafari Books Online |
||
037 |
_aADDC87CE-FB5A-45D6-8AFC-C921E43C8F86 _bOverDrive, Inc. _nhttp://www.overdrive.com |
||
040 |
_aDLC _beng _erda _epn _cDLC _dYDX _dDG1 _dN$T _dYDXCP _dE7B _dUBY _dCOO _dNOC _dUMI _dDEBSZ _dTEFOD _dOCLCF _dRECBK _dEBLCP _dMHW _dTEFOD _dOCLCQ _dVT2 _dCDS |
||
042 | _apcc | ||
049 | _aMAIN | ||
050 | 0 | 0 | _aQA274.7 |
072 | 7 |
_aMAT _x029040 _2bisacsh |
|
082 | 0 | 0 |
_a519.2/33 _223 |
084 |
_aMAT029000 _2bisacsh |
||
100 | 1 | _aModica, Giuseppe. | |
245 | 1 | 2 |
_aA first course in probability and Markov chains / _cGiuseppe Modica and Laura Poggiolini. _h[electronic resource] |
264 | 1 |
_aChichester : _bWiley, _c2013. |
|
300 | _a1 online resource. | ||
336 |
_atext _btxt _2rdacontent |
||
337 |
_acomputer _bc _2rdamedia |
||
338 |
_aonline resource _bcr _2rdacarrier |
||
504 | _aIncludes bibliographical references and index. | ||
505 | 0 | _aChapter 1 Combinatorics; 1.1 Binomial coefficients; 1.1.1 Pascal triangle; 1.1.2 Some properties of binomial coefficients; 1.1.3 Generalized binomial coefficients and binomial series; 1.1.4 Inversion formulas; 1.1.5 Exercises; 1.2 Sets, permutations and functions; 1.2.1 Sets; 1.2.2 Permutations; 1.2.3 Multisets; 1.2.4 Lists and functions; 1.2.5 Injective functions; 1.2.6 Monotone increasing functions; 1.2.7 Monotone nondecreasing functions; 1.2.8 Surjective functions; 1.2.9 Exercises; 1.3 Drawings; 1.3.1 Ordered drawings. | |
505 | 8 | _a1.3.2 Simple drawings1.3.3 Multiplicative property of drawings; 1.3.4 Exercises; 1.4 Grouping; 1.4.1 Collocations of pairwise different objects; 1.4.2 Collocations of identical objects; 1.4.3 Multiplicative property; 1.4.4 Collocations in statistical physics; 1.4.5 Exercises; Chapter 2 Probability measures; 2.1 Elementary probability; 2.1.1 Exercises; 2.2 Basic facts; 2.2.1 Events; 2.2.2 Probability measures; 2.2.3 Continuity of measures; 2.2.4 Integral with respect to a measure; 2.2.5 Probabilities on finite and denumerable sets; 2.2.6 Probabilities on denumerable sets. | |
505 | 8 | _a2.2.7 Probabilities on uncountable sets2.2.8 Exercises; 2.3 Conditional probability; 2.3.1 Definition; 2.3.2 Bayes formula; 2.3.3 Exercises; 2.4 Inclusion-exclusion principle; 2.4.1 Exercises; Chapter 3 Random variables; 3.1 Random variables; 3.1.1 Definitions; 3.1.2 Expected value; 3.1.3 Functions of random variables; 3.1.4 Cavalieri formula; 3.1.5 Variance; 3.1.6 Markov and Chebyshev inequalities; 3.1.7 Variational characterization of the median and of the expected value; 3.1.8 Exercises; 3.2 A few discrete distributions; 3.2.1 Bernoulli distribution; 3.2.2 Binomial distribution. | |
505 | 8 | _a3.2.3 Hypergeometric distribution3.2.4 Negative binomial distribution; 3.2.5 Poisson distribution; 3.2.6 Geometric distribution; 3.2.7 Exercises; 3.3 Some absolutely continuous distributions; 3.3.1 Uniform distribution; 3.3.2 Normal distribution; 3.3.3 Exponential distribution; 3.3.4 Gamma distributions; 3.3.5 Failure rate; 3.3.6 Exercises; Chapter 4 Vector valued random variables; 4.1 Joint distribution; 4.1.1 Joint and marginal distributions; 4.1.2 Exercises; 4.2 Covariance; 4.2.1 Random variables with finite expected value and variance; 4.2.2 Correlation coefficient; 4.2.3 Exercises. | |
505 | 8 | _a4.3 Independent random variables4.3.1 Independent events; 4.3.2 Independent random variables; 4.3.3 Independence of many random variables; 4.3.4 Sum of independent random variables; 4.3.5 Exercises; 4.4 Sequences of independent random variables; 4.4.1 Weak law of large numbers; 4.4.2 Borel-Cantelli lemma; 4.4.3 Convergences of random variables; 4.4.4 Strong law of large numbers; 4.4.5 A few applications of the law of large numbers; 4.4.6 Central limit theorem; 4.4.7 Exercises; Chapter 5 Discrete time Markov chains; 5.1 Stochastic matrices; 5.1.1 Definitions; 5.1.2 Oriented graphs. | |
520 |
_a"Provides an introduction to basic structures of probability with a view towards applications in information technology A First Course in Probability and Markov Chains presents an introduction to the basic elements in probability and focuses on two main areas. The first part explores notions and structures in probability, including combinatorics, probability measures, probability distributions, conditional probability, inclusion-exclusion formulas, random variables, dispersion indexes, independent random variables as well as weak and strong laws of large numbers and central limit theorem. In the second part of the book, focus is given to Discrete Time Discrete Markov Chains which is addressed together with an introduction to Poisson processes and Continuous Time Discrete Markov Chains. This book also looks at making use of measure theory notations that unify all the presentation, in particular avoiding the separate treatment of continuous and discrete distributions. A First Course in Probability and Markov Chains: Presents the basic elements of probability. Explores elementary probability with combinatorics, uniform probability, the inclusion-exclusion principle, independence and convergence of random variables. Features applications of Law of Large Numbers. Introduces Bernoulli and Poisson processes as well as discrete and continuous time Markov Chains with discrete states. Includes illustrations and examples throughout, along with solutions to problems featured in this book. The authors present a unified and comprehensive overview of probability and Markov Chains aimed at educating engineers working with probability and statistics as well as advanced undergraduate students in sciences and engineering with a basic background in mathematical analysis and linear algebra"-- _cProvided by publisher. |
||
520 |
_a"A first course in Probability and Markov Chains presents an introduction to the basic elements in statistics and focuses in two main areas"-- _cProvided by publisher. |
||
588 | 0 | _aPrint version record and CIP data provided by publisher. | |
650 | 0 | _aMarkov processes. | |
650 | 4 | _aMarkov processes. | |
650 | 7 |
_aMATHEMATICS _xProbability & Statistics _xGeneral. _2bisacsh |
|
650 | 7 |
_aMarkov processes. _2fast _0(OCoLC)fst01010347 |
|
650 | 7 |
_aMarkov processes. _2local |
|
655 | 4 | _aElectronic books. | |
655 | 0 | _aElectronic books. | |
700 | 1 | _aPoggiolini, Laura. | |
776 | 0 | 8 |
_iPrint version: _aModica, Giuseppe. _tFirst course in probability and Markov chains _z9781119944874 _w(DLC) 2012033463 |
856 | 4 | 0 |
_uhttp://onlinelibrary.wiley.com/book/10.1002/9781118477793 _zWiley Online Library |
942 |
_2ddc _cBK |
||
999 |
_c206225 _d206225 |