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Q: How can you tell if a set of bivariate data shows a linear relationship?
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Related questions

Which data set shows a linear relationship existing between X and Y?

yes


Non-example of bivariat data in numbers?

Non-example of bivariate data in numbers is that with numbers that have no relationship between them.


What is bivariat data?

In statistics, bivariate data refers to data that comes with two variables.


Which data can best be represented by a line chart?

The data that can best be represented by a line chart is time series data. This type of data shows how something changes over a long or short period of time.


What is a set of data involving two variables?

Bivariate


How can you make a scatter plot from a set of bivariate data?

hhh


What does an equation that shows a relationship among certain quantities?

It shows a relationship among certain quantities.


What is a bivariate fit?

A bivariate fit is a correlation analysis in statistics. Basically you have 2 sets of paired data and want to know if they statistically correlated. You graph the pairs, as X,Y and make a linear regression line between the points. The slope of the line is the correlation coeffiencint, the closer the line is to a 45 degree angle the more likely your data is dependent on one another. if the line is flat then there is no correlation.


Data that demonstrates no response to a variable shows what kind of data relationship?

Direct


What is the graph of joint variation?

In my view, the best plot for bivariate data is a scatter plot.


What shows the relationship betwen tow sets of data?

frequancy


What does a line of best fit tell you about data on scatterplot?

It tells you that if there were a linear relationship between the two variables, what that relationship would look like and also how much the observations differed from that linear fit.