Sum of square of the deviations about mean is_______.a)Maximumb)Minimu...
Sum of square of the deviations about mean is Minimum
The sum of the squares of deviations about the mean, also known as the sum of squared residuals or the sum of squared errors, is a measure of the variability or dispersion of a set of data points around their mean. It is often used in statistics to assess the goodness of fit of a regression model or to compare the variability of different datasets.
The sum of square of deviations about mean is minimum when the data points are located close to the mean. In other words, the closer the data points are to the mean, the smaller the sum of squares of deviations will be. This occurs because the deviations are squared before being summed, which means that larger deviations have a disproportionately larger impact on the sum.
Explanation:
When we calculate the sum of squares of deviations about the mean, we are essentially measuring how far each data point is from the mean, squaring those distances, and then summing them up. This gives us a measure of the overall variability or dispersion of the data.
When the data points are located close to the mean, the deviations will be small, and when we square these small deviations, we get even smaller values. As a result, the sum of squares of deviations will be relatively small.
On the other hand, when the data points are spread out from the mean, the deviations will be larger, and squaring these larger deviations will result in even larger values. Consequently, the sum of squares of deviations will be larger.
Therefore, the sum of squares of deviations about the mean is minimum when the data points are located close to the mean, indicating less variability or dispersion in the dataset.
Conclusion:
In conclusion, the sum of squares of deviations about the mean is minimum when the data points are located close to the mean. This measure of variability is used to assess the goodness of fit of regression models and compare the variability of different datasets. Understanding the concept of sum of squares of deviations can help in analyzing and interpreting statistical data.
Sum of square of the deviations about mean is_______.a)Maximumb)Minimu...
The sum of the squares of the deviations about the mean is also known as the sum of squared deviations or sum of squares. It is a measure of the dispersion or variability in a dataset.
To calculate the sum of squares, we first calculate the deviation of each data point from the mean by subtracting the mean from each data point. Then, we square each deviation and sum up all the squared deviations.
When we calculate the sum of squares, the goal is to minimize this value. By minimizing the sum of squares, we can find the best-fitting measure of central tendency, which is the mean. This is the idea behind the method of least squares, which is commonly used in regression analysis to find the best-fit line.
If we were to change any of the data points slightly, the sum of squares would increase. Therefore, the current sum of squares represents the minimum value of the sum of squares possible for that dataset.
In summary, the sum of the squares of the deviations about the mean is minimum for a given dataset.