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Limits of correlation coefficient - Correlation & Regression, Business Mathematics & Statistics Video Lecture | SSC CGL Tier 2 - Study Material, Online Tests, Previous Year

FAQs on Limits of correlation coefficient - Correlation & Regression, Business Mathematics & Statistics Video Lecture - SSC CGL Tier 2 - Study Material, Online Tests, Previous Year

1. What is the correlation coefficient and why is it important in business mathematics and statistics?
Ans. The correlation coefficient is a statistical measure that quantifies the strength and direction of the linear relationship between two variables. It is important in business mathematics and statistics because it helps in understanding the degree of association between variables, allowing businesses to make informed decisions based on data analysis.
2. How is the correlation coefficient interpreted?
Ans. The correlation coefficient ranges from -1 to +1. A positive correlation coefficient indicates a positive relationship between variables, where an increase in one variable is associated with an increase in the other. A negative correlation coefficient represents a negative relationship, where an increase in one variable is associated with a decrease in the other. The closer the correlation coefficient is to -1 or +1, the stronger the relationship between the variables.
3. What are the limits of the correlation coefficient in determining causation?
Ans. While the correlation coefficient helps measure the relationship between variables, it does not imply causation. Correlation only shows that two variables are associated, but it does not prove that changes in one variable directly cause changes in the other. Other factors, known as confounding variables, may be responsible for the observed correlation. Therefore, it is important to exercise caution when interpreting the correlation coefficient and avoid assuming causation based solely on correlation.
4. Can the correlation coefficient be used to predict future values?
Ans. Yes, the correlation coefficient can be used to make predictions about future values. If a strong positive or negative correlation exists between two variables, it suggests that changes in one variable can be used to predict corresponding changes in the other. However, it is essential to consider other factors and perform additional analysis to ensure the accuracy and reliability of the predictions.
5. What are some limitations of the correlation coefficient?
Ans. The correlation coefficient has several limitations. First, it only measures the linear relationship between variables and may not capture non-linear relationships. Second, the correlation coefficient is sensitive to outliers, meaning that extreme values can greatly influence the coefficient. Third, the correlation coefficient does not provide information about the magnitude of the relationship, only the direction and strength. Finally, the correlation coefficient is specific to the sample being analyzed and may not generalize to the entire population.
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