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Vector calculus Integration and measure Analysis review: Vector calculus and measure Patrick Breheny August 30 Patrick Breheny University of Iowa Likelihood Theory (BIOS 7110) 1 / 19 Vector calculus Integration and measure Introduction • Next up, we’ll be reviewing the central tools of calculus: derivatives and integrals • I assume that you’re already quite familiar with ordinary scalar derivatives, but not necessarily with vector derivatives • Likewise, I assume that you know how to take integrals, but perhaps not with its underlying theoretical development, and not with the Riemann-Stieltjes form of integrals • This form is useful to be aware of, as it has a deep connection with probability theory and allows for a nice unification of continuous and discrete probability theory Patrick Breheny University of Iowa Likelihood Theory (BIOS 7110) 2 / 19 Vector calculus Integration and measure Real-valued functions: Derivative and gradient • Vector calculus is extremely important in statistics, and we will use it frequently in this course • d Definition: For a function f : R → R, its derivative is the 1×drowvector ˙ h ∂f ∂f i f(x) = ∂x1 ··· ∂xd • In statistics, it is generally more common (but not always the case) to use the gradient (also called “denominator layout” or the “Hessian formulation”) ˙ ⊤ ∇f(x)=f(x) ; i.e., ∇f(x) is a d × 1 column vector Patrick Breheny University of Iowa Likelihood Theory (BIOS 7110) 3 / 19 Vector calculus Integration and measure Vector-valued functions • d k Definition: For a function f : R → R , its derivative is the k×dmatrix with ijth element ∂f (x) ˙ i f(x) = ij ∂x j • Correspondingly, the gradient is a d × k matrix: ˙ ⊤ ∇f(x) = f(x) • In our course, this will usually come up in the context of taking second derivatives; however, by the symmetry of second derivatives, we have 2 ¨ ∇ f(x) = f(x) Patrick Breheny University of Iowa Likelihood Theory (BIOS 7110) 4 / 19
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