| Lecture 1 | Introduction,
	    Probability spaces, properties of probability measures,
	    conditional probability, independence. | 
| Lecture 2 | Bayes' rule and
	    inference, independent trials, discrete random variables
	    and probability mass functions, cumulative distribution
	    functions, continuous random variables and densities. | 
| Lecture 3 | Mixed and Singular
	    Random Variables, properties of density functions,
	    Conditional Distributions, functions of random variables,
	    expected values and moments. | 
| Lecture 4 | Gaussian Random
	    Variables, Markov's Inequality, Chebyshev's Inequality,
	    Chernoff Bounds, Moment Generating Functions.y | 
| Lecture 5 | Characteristic Functions; random vectors,
	  joint cdfs, pdfs and pmfs, marginal distributions. | 
| Lecture 6 | Independence of random variables, Functions
	    of multiple random variables, linear transformations of
	    random vectors, Expectation and moments of random vectors,
	  correlation and covariance. | 
| Lecture 7 | Linear estimation; Jointly Gaussian pairs of
	    random variables and
	    their properties. | 
| Lecture 8 | Conditional probability distributions,
	    Conditional expectation, iterated expectations. | 
| Lecture 9 | Baysian MMSE estimation, estimation and
	    jointly Gaussian random variables. | 
| Lecture 10 | Jointly Gaussian random vectors,
	    Covariance matrices, MMSE estimation for random
	    vectors. | 
| Lecture 11 | Mean-square convergence, convergence in
	    probability, convergence almost surely, Weak and Strong
	    Laws of Large numbers | 
| Lecture 12 | Convergence in distribution, the central
	    limit theorem; introduction to stochastic processes. | 
| Lecture 13 | Finite dimensional distributions and
	    Kolmogorov's theorem,
	    Stationary processes, memoryless processes, stationary increments, independent
	    increments, Markov property, counting processes, random
	    walks. | 
| Lecture 14 | Markov chains, transition
matrices/graphs, n-step transistions, first-step analysis, stationary
distributions. | 
| Lecture 15 | Arrival processes/counting processes,
Poisson processes. | 
| Lecture 16 | Mean and correlation/covariance functions,
wide sense stationary processes, Gaussian Processes, Wiener
processes. | 
| Lecture 17 | Multiple random processes, cross
correlation functions, Mean-square calculus. | 
| Lecture 18 | Mean-square integration, random processes
and linear systems, power spectral density functions. | 
| Lecture 19 | Systems driven by white noise; optimal linear
filtering; the non-causal Wiener filter; overview of related courses. |