04389nam 2200661Ia 450 99621742630331620170821160640.097866132740211-283-27402-71-118-16596-91-118-16583-7(CKB)1000000000013752(EBL)818937(OCoLC)757394297(SSID)ssj0000540383(PQKBManifestationID)11314750(PQKBTitleCode)TC0000540383(PQKBWorkID)10581864(PQKB)10850129(SSID)ssj0000644272(PQKBManifestationID)12264796(PQKBTitleCode)TC0000644272(PQKBWorkID)10675598(PQKB)11308154(MiAaPQ)EBC818937(EXLCZ)99100000000001375220110625d2008 uy 0engur|n|---|||||txtccrProbability and statistics for computer science[electronic resource] /James L. JohnsonHoboken, NJ Wiley Intersciencec20081 online resource (764 p.)Description based upon print version of record.0-470-38342-9 0-471-32672-0 Includes bibliographical references (p. 733-738) and index.Probability and Statistics for Computer Science; Contents; Preface; 1 Combinatorics and Probability; 1.1 Combinatorics; 1.1.1 Sampling without replacement; 1.1.2 Sampling with replacement; 1.2 Summations; 1.3 Probability spaces and random variables; 1.4 Conditional probability; 1.5 Joint distributions; 1.6 Summary; 2 Discrete Distributions; 2.1 The Bernoulli and binomial distributions; 2.2 Power series; 2.3 Geometric and negative binomial forms; 2.4 The Poisson distribution; 2.5 The hypergeometric distribution; 2.6 Summary; 3 Simulation; 3.1 Random number generation3.2 Inverse transforms and rejection filters3.3 Client-server systems; 3.4 Markov chains; 3.4.1 Irreducible aperiodic Markov chains; 3.4.2 Convergence properties; 4 Discrete Decision Theory; 4.1 Decision methods without samples; 4.2 Statistics and their properties; 4.3 Sufficient statistics; 4.4 Hypothesis testing; 4.4.1 Simple hypothesis versus simple alternative; 4.4.2 Composite hypotheses; 4.5 Summary; 5 Real Line-Probability; 5.1 One-dimensional real distributions; 5.2 Joint random variables; 5.3 Differentiable distributions; 5.4 Summary; 6 Continuous Distributions6.1 The normal distribution6.1.1 The univariate and bivariate normal distributions; 6.1.2 The multivariate normal distribution; 6.2 Limit theorems; 6.2.1 Convergence concepts; 6.2.2 An inversion formula; 6.3 Gamma and beta distributions; 6.4 The χ2 and related distributions; 6.5 Computer simulations; 6.6 Summary; 7 Parameter Estimation; 7.1 Bias, consistency, and efficiency; 7.2 Normal inference; 7.3 Sums of squares; 7.4 Analysis of variance; 7.5 Linear regression; 7.6 Summary; A Analytical Tools; A.1 Sets and functions; A.2 Limits; A.3 Structure of the real numbersA.4 Riemann-Stieltjes integralsA.5 Permutations and determinants; B Statistical Tables; Bibliography; IndexComprehensive and thorough development of both probability and statistics for serious computer scientists; goal-oriented: ""to present the mathematical analysis underlying probability results""Special emphases on simulation and discrete decision theoryMathematically-rich, but self-contained text, at a gentle paceReview of calculus and linear algebra in an appendixMathematical interludes (in each chapter) which examine mathematical techniques in the context of probabilistic or statistical importanceNumerous section exercises, summaries, historical notes, and Further ReadingsComputer scienceMathematicsProbabilitiesMathematical statisticsData processingElectronic books.Computer scienceMathematics.Probabilities.Mathematical statisticsData processing.519.2024004Johnson James L(James Lee),1942-17082MiAaPQBOOK996217426303316Probability and statistics for computer science1575859UNISA