mx sb1 5.3 Statistics ❋ Name:

Temp (°C)
26
30
46
45
88
48
41
22
22

SpeedFan exotics

    The data provided in the table are the temperatures reported by sensors in a desktop computer. These temperatures must be within certain ranges for the computer to operate properly and not fail prematurely.

    1. _________ What level of measurement is the data?
    2. __________ Calculate the sample size n for the data.
    3. __________ Determine the minimum.
    4. __________ Determine the maximum.
    5. __________ Calculate the range.
    6. __________ Calculate the midrange.
    7. __________ Determine the mode.
    8. __________ Determine the median.
    9. __________ Calculate the sample mean x.
    10. 20.5149 Freebie: This is the standard deviation sx to four decimal places. If you obtain a different value, then you typed in the wrong data! Calculate the standard deviation sx and check for agreement.
    11. __________ Calculate the sample coefficient of variation CV.
    12. __________ If this data were to be divided into six classes, what would be the width of a single class?
    13. Determine the frequency and calculate the relative frequency using six classes. Record your results in the table provided.
      Temp CUL (cm)Frequency (f)Relative Frequency
      Sum:
    14. Sketch a frequency histogram chart of the data anywhere it fits, labeling your horizontal axis and vertical axis as appropriate.
    15. ____________________ What is the shape of the distribution?
    16. __________ Use the sample mean x and standard deviation sx calculated above to determine the z-score for 88 °C.
    17. ____________________ Is the z-score for 88 °C an ordinary or unusual z-score?
    18. p(T < 33 °C) = __________ What is the probability that a system temperature T will be below 33°C?

    Time versus temperature Sunshine

    Data

    Run Time (hrs)Temp (°C)
    0.425
    3.027
    4.428
    4.733
    9.935
    background rectangle major grid lines axes x-axis and y-axis linear regression line data points as circles text layers Time versus temperature Sensors in a computer system. Run Time (hrs) Temp (°C) y-axis labels 25 26 27 28 29 30 31 32 33 34 35 x-axis labels 0.4 1.4 2.3 3.3 4.2 5.2 6.1 7.1 8.0 9.0 9.9

    y = 1.09306x + 24.703
    

    The table provides running time versus temperature data for a computer.

    1. _________ Calculate the sample size n.
    2. _________ Calculate the slope of the linear regression.
    3. _________ Calculate the y-intercept of the linear regression.
    4. _________ Is the relation between Run Time (hrs) and Temp (°C) positive, negative, or neutral?
    5. _________ Calculate the correlation coefficient r for the data.
    6. ______________ Is the correlation none, weak/low, moderate, strong/high, or perfect?
    7. ______________ Determine the coefficient of determination.
    8. ______________ What percent in the variation in Run Time (hrs) "explains" the variation in Temp (°C)?
    9. _________ Use the slope and intercept to predict the CPU Temp (°C) for a Run Time (hrs) equal to 7 hrs.
    10. _________ Use the slope and intercept to determine the Run Time (hrs) at which the Temp (°C) is predicted to be 30 °C.
    14sample size n  5
    15slope  1.09
    16intercept  24.7
    17nature positive
    18correlation 0.9
    19strength strong
    20coef det  0.810
    21perc variation81.00%
    227 hrs.32.35 Temp (°C)
    2330 °C.4.85 Run Time (hrs)
    ttest:  3.5759
    p-value:  0.0373946
    max c 0.9626054