This is a course on Stochastic Processes that aims at describing some advanced level topics in this area of research with a very strong potential of applications. This course also prepares students for undertaking research in this area. This also helps prepare students for applications of this important subject to agricultural sciences.
Students will able to
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Learning outcomes (at course level |
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Assessment Strategies
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Paper Code |
Paper Title |
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STT- 422(B)
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Stochastic Process |
CO 104: Identify and formulate fundamental probability distribution and density functions, as well as functions of random variables.
CO 105: Explain the concepts of expectation and conditional expectation, and describe their properties.
CO 106: Analyze continuous and discrete-time random processes.
CO 107: Explain the concepts of stationary and wide-sense stationarity, and appreciate their significance.
CO 108: Formulate simple stochastic process models in the time domain and provide qualitative and quantitative analyses of such models.
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Approach in teaching:
Interactive Lectures, Group Discussion, Classroom Assignment Problem Solving Sessions
Learning activities for the students:
Assignments Seminar Presentation Subject based Activities |
Classroom Quiz Assignments Class Test Individual Presentation |
Unit-I
Introduction to stochastic process - classification according to state space and time domain. Finite and countable state Markov chains; time homogeneity; Chapman-Kolmogorov equations, marginal distribution and finite dimensional distributions. Classification of Markov chain.
Unit-II
Canonical form of transition probability matrix of a Markov chain. Fundamental matrix; probabilities of absorption from transient states into recurrent classes in a finite Markov chain, mean time for absorption. Ergodic state and Ergodic chain. Stationary distribution of a Markov chain, existence and evaluation of stationary distribution. Random walk and gamblers ruin problem
Unit-III
Discrete state continuous time Markov process: Kolmogorov difference – differential equations. Birth and death process, pure birth process (Yule- Fury process). Immigration-Emigration process. Linear growth process, pure death process.
Unit-IV
Renewal process: renewal process when time is discrete and continuous. Renewal function and renewal density. Statements of Elementary renewal theorem and Key renewal theorem
Unit-V
Branching process: Galton-Watson branching process. Mean and variance of size of nth generation, probability of ultimate extinction of a branching process. Fundamental theorem of branching process and applications. Introduction of Wiener process
● Adke, S.R. & Manjunath S.M. (1984) : An Introduction of Finite Markov Processes, Wiley Eastern.
● Bhatt ,B.R. (2000): Stochastic Models: Analysis and applications, New Age International, India
● Cox,,P.R.(1970): Demography, Cambridge University Press
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