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File: Derivatives Calculus Pdf 171165 | 8 30 Item Download 2023-01-26 17-48-12
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 ...

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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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...Vector calculus integration and measure analysis review patrick breheny august university of iowa likelihood theory bios introduction next up we ll be reviewing the central tools derivatives integrals i assume that you re already quite familiar with ordinary scalar but not necessarily likewise know how to take perhaps its underlying theoretical development riemann stieltjes form this is useful aware as it has a deep connection probability allows for nice unication continuous discrete real valued functions derivative gradient extremely important in statistics will use frequently course d denition function f r drowvector h x xd generally more common always case also called denominator layout or hessian formulation e column k dmatrix ijth element ij j correspondingly matrix our usually come context taking second however by symmetry have...

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