Probability and Probability Distributions With R Applications

Stok Kodu:
9786253765125
Boyut:
210-297-
Sayfa Sayısı:
578
Baskı:
1
Basım Tarihi:
2025-06-02
Kapak Türü:
Karton
Kağıt Türü:
Kitap Kağıdı
Dili:
İngilizce
%20 indirimli
885,00TL
708,00TL
Taksitli fiyat: 6 x 127,44TL
9786253765125
1301140
Probability and Probability Distributions With R Applications
Probability and Probability Distributions With R Applications
708.00
This textbook is designed to serve as both a primary and supplementary resource for all academic departments offering a course in probability. Each chapter is systematically structured to begin with a theoretical exposition, followed by detailed, fully worked examples. To support deeper understanding and practical application of probability concepts, each section includes corresponding R programming implementations. The content encompasses the foundational concepts of set theory, construction of sample spaces, conditional probability, independence, and Bayes' theorem. It further explores the concept of random variables, properties of discrete and continuous random variables, probability mass functions, probability density functions, and cumulative distribution functions. Scenarios involving univariate, bivariate, and multivariate random variables are thoroughly analyzed. Additionally, the text covers independence of random variables, conditional probability functions, quantiles, and key statistical measures associated with probability distributions including expected value, variance, moments, moment-generating functions, covariance, correlation, characteristic functions, and factorial moment-generating functions. Essential inequalities such as Markov, Chebyshev, and Cauchy–Schwarz, along with the Central Limit Theorem, are presented with comprehensive exercises and R-based solutions. The book also provides an in-depth examination of commonly used discrete and continuous probability distributions, including: Bernoulli, Binomial, Multinomial, Geometric, Negative Binomial, Hypergeometric, Generalized Hypergeometric, Poisson, Discrete Uniform, Continuous Uniform, Normal, Standard Normal, Bivariate Normal, Log-Normal, Exponential, Gamma, Beta, and Cauchy distributions. For each distribution, the probability and distribution functions, distributional shapes, expected values, moments, and moment-generating functions are derived and illustrated with examples and R programming applications.
This textbook is designed to serve as both a primary and supplementary resource for all academic departments offering a course in probability. Each chapter is systematically structured to begin with a theoretical exposition, followed by detailed, fully worked examples. To support deeper understanding and practical application of probability concepts, each section includes corresponding R programming implementations. The content encompasses the foundational concepts of set theory, construction of sample spaces, conditional probability, independence, and Bayes' theorem. It further explores the concept of random variables, properties of discrete and continuous random variables, probability mass functions, probability density functions, and cumulative distribution functions. Scenarios involving univariate, bivariate, and multivariate random variables are thoroughly analyzed. Additionally, the text covers independence of random variables, conditional probability functions, quantiles, and key statistical measures associated with probability distributions including expected value, variance, moments, moment-generating functions, covariance, correlation, characteristic functions, and factorial moment-generating functions. Essential inequalities such as Markov, Chebyshev, and Cauchy–Schwarz, along with the Central Limit Theorem, are presented with comprehensive exercises and R-based solutions. The book also provides an in-depth examination of commonly used discrete and continuous probability distributions, including: Bernoulli, Binomial, Multinomial, Geometric, Negative Binomial, Hypergeometric, Generalized Hypergeometric, Poisson, Discrete Uniform, Continuous Uniform, Normal, Standard Normal, Bivariate Normal, Log-Normal, Exponential, Gamma, Beta, and Cauchy distributions. For each distribution, the probability and distribution functions, distributional shapes, expected values, moments, and moment-generating functions are derived and illustrated with examples and R programming applications.
Axess Kartlar
Taksit Sayısı Taksit tutarı Genel Toplam
Tek Çekim 708,00    708,00   
2 368,16    736,32   
3 250,16    750,48   
6 127,44    764,64   
QNB Finansbank Kartları
Taksit Sayısı Taksit tutarı Genel Toplam
Tek Çekim 708,00    708,00   
2 368,16    736,32   
3 250,16    750,48   
6 127,44    764,64   
Bonus Kartlar
Taksit Sayısı Taksit tutarı Genel Toplam
Tek Çekim 708,00    708,00   
2 368,16    736,32   
3 250,16    750,48   
6 127,44    764,64   
Paraf Kartlar
Taksit Sayısı Taksit tutarı Genel Toplam
Tek Çekim 708,00    708,00   
2 368,16    736,32   
3 250,16    750,48   
6 127,44    764,64   
Maximum Kartlar
Taksit Sayısı Taksit tutarı Genel Toplam
Tek Çekim 708,00    708,00   
2 368,16    736,32   
3 250,16    750,48   
6 127,44    764,64   
World Kartlar
Taksit Sayısı Taksit tutarı Genel Toplam
Tek Çekim 708,00    708,00   
2 368,16    736,32   
3 250,16    750,48   
6 127,44    764,64   
Diğer Kartlar
Taksit Sayısı Taksit tutarı Genel Toplam
Tek Çekim 708,00    708,00   
2 -    -   
3 -    -   
6 -    -   
Yorum yaz
Bu kitabı henüz kimse eleştirmemiş.
Kapat