Probability and Statistical Inference. Robert Bartoszynski
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Название: Probability and Statistical Inference

Автор: Robert Bartoszynski

Издательство: John Wiley & Sons Limited

Жанр: Математика

Серия:

isbn: 9781119243823

isbn:

СКАЧАТЬ rel="nofollow" href="#ulink_042998e1-c77e-5f9e-b6f0-697f68a6d11d">Table 1.1 Outcomes on a pair of dice.

      2 Chapter 14Table 14.1 The data for Example 14.2.Table 14.2Table 14.3Table 14.4

      3 1Table A.1 Built in distributionsTable A.2 Densities/pdf's and cdf's of built in distributionsTable A.3 Quantiles and random number generation of built in distributionsTable A.4 Basic statistics for data values stored in vectorimages Table A.5 Basic graphical methods

      4 2Table B.1 Quantiles of the chi‐square distribution for determining the shorte...Table B.2 Tail probabilitiesimages of the Kolmogorov distribution

      List of Illustrations

      1 Chapter 1Figure 1.1 Possible seatings of persons A and B at a square table.Figure 1.2 Possible seatings of any two persons at a square table.Figure 1.3 Possible seatings of one person if the place of the other person ...Figure 1.4 Scheme of a randomized response.Figure 1.5 Complement, union, and intersection.Figure 1.6 The first De Morgan's law.Figure 1.7 Complement of a Rectangle.

      2 Chapter 2Figure 2.1 Hitting a target.Figure 2.2 First solution of Bertrand's problem.Figure 2.3 Second solution of Bertrand's problem.Figure 2.4 Third solution of Bertrand's problem.Figure 2.5 Explanation of Bertrand's paradox.Figure 2.6 Union of two events.Figure 2.7 Union of three events.

      3 Chapter 3Figure 3.1 Pascal's triangle.Figure 3.2 Process of counting votes.Figure 3.3 Reflection principle.

      4 Chapter 4Figure 4.1 Possible results of the two first draws in Example 4.5.Figure 4.2 Transitions in model of epidemic.

      5 Chapter 5Figure 5.1 Cdf of the distance from the center of the target.Figure 5.2 Cdf of the number of heads in three tosses of a coin.Figure 5.3 Cdf of random variable X.Figure 5.4 Cdf of distribution uniform on images .

      6 Chapter 6Figure 6.1 Shadows and sections of domain images of integration.Figure 6.2 Support of density images and the set images .Figure 6.3 A function that is not a cdf but satisfies (a)–(d).Figure 6.4 Marginal density.Figure 6.5 Condition for dependence.Figure 6.6 Probability of better of two attempts exceeding 0.75.Figure 6.7 Three‐component system.Figure 6.8 Joint distribution of images and images .Figure 6.9 Options for marginal densities of images and images .Figure 6.10 Conditional densities.Figure 6.11 Triangular density.Figure 6.12 Supports of images and images .Figure 6.13 Approximations of two conditioning events.Figure 6.14 First two generations in the process of grinding.

      7 Chapter 7Figure 7.1 Interpretation of expected value of a discrete random variable.Figure 7.2 Interpretation of expected value of a continuous random variable....Figure 7.3 Approximating sums for Riemann and Lebesgue integrals.Figure 7.4 Graph of images and its cdf.Figure 7.5 Nonintegrable function whose iterated integrals exist and are not...Figure 7.6 Nonintegrable function whose iterated integrals exist and are equ...Figure 7.7 Length of 16 feet (Drawing by S. Niewiadomski).Figure 7.8 Two weightings of A and B.Figure 7.9 Dependent but uncorrelated random variables.

      8 Chapter 8Figure 8.1 Flowchart.Figure 8.2 Series system.Figure 8.3 Parallel system.Figure 8.4 Series‐parallel system.Figure 8.5 Flowchart.Figure 8.6 Two regression lines.Figure 8.7 Shapes of beta distributions.

      9 Chapter 10Figure 10.1 Lifetime T(t*) of a bulb.

      10 Chapter 11Figure 11.1 Likelihood function for the range images in uniform distribution.Figure 11.2 Likelihood function for five Bernoulli trials.

      11 Chapter 12Figure 12.1 Power functions images and images .Figure 12.2 Power functions of tests images and images .Figure 12.3 Power of the two‐sided test images .Figure 12.4 Partition into sets images .Figure 12.5 Power functions of a one‐sided UMP test (dashed line) and a UMPU...Figure 12.6 Power function of an unbiased test.Figure 12.7 Golden rectangles.

      12 Chapter 13Figure 13.1 True regression.Figure 13.2 Linear regression for uniform distribution of images .Figure 13.3 Ages of Polish kings and their heirs at death.Figure 13.4 (a) No effects of images or images . (b) No effect of images , effect of images , no in...

      13 Chapter 16Figure 16.1 Posterior densities (dashed line) for different prior densities ...Figure 16.2 The 90% central credible interval (dotted line) and the 90% high...

      14 1Figure A.1 The densities of BETA(2, СКАЧАТЬ