Reading: Gilat 3.1-3.6
One great advantage of MATLAB is the ease with which you can support simultaneous computations across a vector using vectorized operations. We looked at some of these during classtime- and if you get stumped, take a peek at our solutions.
One way to do this is to build a series as in the previous problem for a particular , and to use the sum function to cmpute the sum. This could be repeated for several values of . An easier way to see the progression is to rely instead on the cumsum function. For a vector v, the call sum(v) returns a scalar that is the sum of all entries. In constrast, the call cumsum(v) returns a vector with length equal to v, where the kth entry of the result is the sum of the first k entries of v (thus the last entry of the result the sum of all entries).
If we let v denote the vector from the previous problem for , examine the results of cumsum(v).
Although, we cannot precisely evaluate an infinite sum, we can create a decent approximation to by evaluating the sum of the first terms of this series.
Using cumsum as in the previous problem, compute a vector approxE that has approximations of based on the first terms of the infinite series, for ranging from 1 to 20. Then compute another vector named errors by subtracting exp(1) from all entries so that what remains is the difference between our approximation and MATLAB's computation of .
Create a script that approximates the value by summing the first terms of the series and then test the results by evaluating the expression yourApprox - log(2), which represents the difference between your approximation and MATLAB's calculation of the value. How does this difference vary with the choice of ?
There is a library function polyval(p,x) that computes given such a vector and scalar . However, we can perform the evaluation ourself through use of vectorized operations. Give an expression or a series of commands to compute given and .
Let's test this empirically. Assuming that variable represents the desired number of trials, develop an expression that computes the percentage of random numbers that are less than or equal to . Once you have your formula developed, test it by hand on values of such as , , , .
Let's test this empirically. Assuming that variable represents the desired number of trials, develop an expression that computes the percentage of normally distributed random numbers that are greater than or equal to . Once you have your formula developed, test it by hand on values of such as , , , .