Chandini Pamulapati
2022-06-03
Among 157 African-American men, the mean systolic blood pressure was 146 mm Hg with a standard deviation of 27. We wish to know if on the basis of these data, we may conclude that the mean systolic blood pressure for a population of African-American is greater than 140.
- Setup the null and alternate hypothesis
- Determine the type of the test
- Use a=0.01, conduct the test and accept or reject the hypothesis on the basis of the test.
Which of the following statements is not correct for the relation R defined by aRb, if and only if b lives within one kilometre from a?
A) R is reflexive
B) R is symmetric
C) R is not anti-symmetric
D) None of the above
A line segment is a part of a line as well as a ray. True or False
Which characteristic of a data set makes a linear regression model unreasonable?
Find the meaning of 'Sxx' and 'Sxy' in simple linear regression
In the least-squares regression line, the desired sum of the errors (residuals) should be
a) zero
b) positive
c) 1
d) negative
e) maximized
Can the original function be derived from its order Taylor polynomial?
Should the independent (or dependent) variables in a linear regression model be normal or just the residual?
What is the relationship between the correlation of two variables and their covariance?
What kind of technique is to be adopted if I have to find an equation or model for say, depends on , changes for a set of , which changes for different .
Correlation bound
Let x and y be two random variables such that:
Corr(x,y) = b, where Corr(x,y) represents correlation between x and y, b is a scalar number in range of [-1, 1]. Let y' be an estimation of y. An example could be y'=y+(rand(0,1)-0.5)*.1, rand(0,1) gives random number between 0, 1. I am adding some noise to the data.
My questions are:
Is there a way where I can bound the correlation between x, y' i.e. Corr(x,y')?I mentioned y' in light of random perturbation, I would like to know what if I don't have that information, where I only know that y' is a estimation of y. Are there any literature that cover it?
What is the benefit of OU vs regression for modeling data, say data in the form of () pairs?
Can you determine the correlation coefficient from the coefficient of determination?
How can one find the root of sesquilinear form with positive definite matrix?
From numerical simulation and regression analysis I discovered that the root-mean-square amplitude of white noise with bandwidth is proportional to . How can this be derived mathematically ?
In a Simple Linear Regression analysis, independent variable is weekly income and dependent variable is weekly consumption expenditure. Here % confidence interval of regression coefficient, is .