
Tips
... We can see that Set B has greater spread than Set A. But the problem with the range is that it uses only two of the values in the data set. One of these may be an odd or unusual value called an outlier. Consider the two sets of values below: Set Y: 1, 1, 2, 2, 2 , 2, 2, 100. Set Z: 1, 18, 23, 41, 59 ...
... We can see that Set B has greater spread than Set A. But the problem with the range is that it uses only two of the values in the data set. One of these may be an odd or unusual value called an outlier. Consider the two sets of values below: Set Y: 1, 1, 2, 2, 2 , 2, 2, 100. Set Z: 1, 18, 23, 41, 59 ...
Large deviations bounds and applications Chapter 3
... Note that this is just another way to write the trivial observation that E[X] k ·Pr[X k]. Can we give any meaningful upperbound on Pr[X < c · E[X]] where c < 1, in other words the probability that X is a lot less than its expectation? In general we cannot. However, if we know an upperbound on X then ...
... Note that this is just another way to write the trivial observation that E[X] k ·Pr[X k]. Can we give any meaningful upperbound on Pr[X < c · E[X]] where c < 1, in other words the probability that X is a lot less than its expectation? In general we cannot. However, if we know an upperbound on X then ...
Probability Models
... red is 50%, so that this is a good bet. However, after mastering conditional probability (Section 1.6), you will know that conditional on one side being red, the probability that the other side is also red is equal to 2/3. So, by the theory of expected values (Chapter 3), you will know that you shou ...
... red is 50%, so that this is a good bet. However, after mastering conditional probability (Section 1.6), you will know that conditional on one side being red, the probability that the other side is also red is equal to 2/3. So, by the theory of expected values (Chapter 3), you will know that you shou ...
A NEW STRONG INVARIANCE PRINCIPLE FOR SUMS OF
... truncation arguments which lead to random vectors with possibly very irregular covariance matrices. Most of the existing strong approximation techniques for sums of independent random vectors require some conditions on the ratio of the largest and smallest eigenvalues of the covariance matrices (see ...
... truncation arguments which lead to random vectors with possibly very irregular covariance matrices. Most of the existing strong approximation techniques for sums of independent random vectors require some conditions on the ratio of the largest and smallest eigenvalues of the covariance matrices (see ...