The sum and sum of squares corresponding to length x (in cm) and weight y (in gm) of 50 plant products are given below:
\(\sum_{i=1}^{50}x_i=212,\sum_{i=1}^{50}x_i^2=902.8,\sum_{i=1}^{50}y_i=261,\sum_{i=1}^{50}y_{i=1}^2=1457.6\)
Which is more varying, the length or weight?
\(\sum_{i=1}^{50}x_i=212,\sum_{i=1}^{50}x_i^2=902.8\)
Here, N = 50
∴ \(Mean,\bar{x}=\frac{\sum_{i=1}^{50}y_i}{N}\frac{212}{50}=4.24\)
\(Varience(σ^2)=\frac{1}{N}\sum_{i=1}^{50}(x_i-\bar{x})^2\)
\(=\frac{1}{50}\sum_{i=1}^{50}({x_i}-4.24)^2\)
\(=\frac{1}{50}\sum_{i=1}^{50}[{x_i^2}-8.48x_i+17.97]\)
\(=\frac{1}{50}\sum_{i=1}^{50}[{x_i^2}-8.48\sum_{i=1}^{50}x_i+17.97×50]\)
\(\frac{1}{5}[902.8-8.48×(212)+898.5]\)
\(=\frac{1}{50}[1801.3-1797.76]\)
\(=\frac{1}{50}×3.54\)
=0.07
∴ standard deviation, σ1 (Length)=√0.07=0.26
∴ C.V (Length)= \(\frac{standard \,deviation}{Mean}×100=\frac{0.26}{4.24}×100=6.13\)
\(\sum_{i=1}^{50}y_i=261,\sum_{i=1}^{50}y_{i=1}^2=1457.6\)
\(∴\,Mean,\bar{y}=\sum_{i=1}^{50}y_i=\frac{1}{50}×261=5.22\)
\(Varience(σ_2^2)=\frac{1}{N}\sum_{i=1}^{50}(y_i-\bar{y})^2\)
\(=\frac{1}{50}\sum_{i=1}^{50}({y_i}-5.22)^2\)
\(=\frac{1}{50}\sum_{i=1}^{50}[{y_i^2}-10.44y_i+27.24]\)
\(=\frac{1}{50}\sum_{i=1}^{50}[{y_i^2}-10.44\sum_{i=1}^{50}y_i+27.24×50]\)
\(\frac{1}{5}[1457.6-10.44×(261)+1362]\)
\(=\frac{1}{50}[2819.6-2724.84]\)
\(=\frac{1}{50}×94.76\)
\(1.89\)
∴ standard deviation, σ2 (Weight)=√1.89=1.37
∴ C.V (Weight) = \(\frac{standard \,deviation}{Mean}×100=\frac{1.37}{5.22}×100=26.24\)
Thus, C.V. of weights is greater than the C.V. of lengths. Therefore, weights vary more than the lengths.
Figures 9.20(a) and (b) refer to the steady flow of a (non-viscous) liquid. Which of the two figures is incorrect ? Why ?
A frequency distribution is a graphical or tabular representation, that exhibits the number of observations within a given interval. The interval size entirely depends on the data being analyzed and the goals of the analyst. The intervals must be collectively exclusive and exhaustive.
Both bar charts and histograms provide a visual display using columns, with the y-axis representing the frequency count, and the x-axis representing the variables to be measured. In the height of children, for instance, the y-axis is the number of children, and the x-axis is the height. The columns represent the number of children noticed with heights measured in each interval.
The types of the frequency distribution are as follows: