Houston, Texas FAT CITY, USA Gloria Lobo-Stratton Sharon Lovdahl Dennis Glendenning.

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Presentation transcript:

Houston, Texas FAT CITY, USA Gloria Lobo-Stratton Sharon Lovdahl Dennis Glendenning

Does Exercise Effect Weight?  Surveyed forty individuals  No Restrictions  No Bias  No Criteria  No Expectations  Just Information

The Data Hours per week Hours Per month Loss per Month

The Rest of the Story Hours per week Hours Per month Loss per Month

Regression Analysis  The Relationship of the Data  Is the Data Linear?  What Does It Tell Us?  Why Would We Care?  Who Could Benefit from This Information?

The Analysis SUMMARY OUTPUT Regression Statistics Multiple R R Square Adjusted R Square Standard Error Observations40 ANOVA dfSSMSFSignificance F Regression E-06 Residual Total CoefficientsStandard Errort StatP-valueLower 95% Intercept Hours Per month E

Predicted Loss Per Month ObservationPredicted Loss per MonthResiduals

The Rest of the Data ObservationPredicted Loss per MonthResiduals

Scatter Plot

Regression Line

Predicted Versus Residuals

Limitations of the Data  Below 5 hours per month there is no result  A minimum of fifteen minutes a day  More than fifty hours a month not likely  1.6 hours a day

What This Means for You

Thank You