The Relationship of Weather and Movie Ticket Sales An analysis to show if temperature and precipitation influence ticket sales of Atlantic Station Regal.

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Presentation transcript:

The Relationship of Weather and Movie Ticket Sales An analysis to show if temperature and precipitation influence ticket sales of Atlantic Station Regal Cinema By: Elizabeth Johnson

The Fundamental Question Does weather influence sales? Null Hypothesis: High/low temperatures and precipitation influence gross ticket sales of Regal Atlantic Station.

Data Regal Corporate – Matt Carr- Business Analyst Daily Gross Sales through May 1 – August 31 of Precipitation (in), High Temp (F), Low Temp (F) through May 1 – August 31 of

Gross Sales Statistics Histogram Mean - $36,767 Max - $170,660 Min - $4306 Standard Deviation - 27,106 Median - $24,517

Gross Sales Stats Continued Quartiles – 25% = $15,426 – 50% = $24,517 – 75% = $55,506 Variance e08 Skewness Kurtosis

Gross Sales vs. High Temp, Low Temp, and Precipitation

Correlation Coefficient Gross Vs. High Temperature: – Corrcoef Number (r) = – Corrcoef Significance (p) = – Corrcoef 95% confidence interval = to Gross Sales vs. Low Temperature: – Corrcoef Number (r) = – Corrcoef Significance (p) = – Corrcoef 95% confidence interval = to Gross Sales vs. Precipitation: – Corrcoef Number (r) = – Corrcoef Significance (p) = – Corrcoef 95% confidence interval = to

Least Squares Regression Gross vs. High Temperature Least Squares Regression Slope of Gross vs. High Temperature e-05 LS Slope 95% Confidence Interval of Gross vs. High Temperature low = e-04 high = e-04

Least Squares Regression Gross vs. Low Temperature Least Squares Regression Slope of Gross vs. Low Temperature e-06 LS Slope 95% Confidence Interval of Gross vs. Low Temperature low = high =

Least Squares Regression Gross vs. Precipitation Least Squares Regression Slope of Gross vs. Precipitation e-07 LS Slope 95% Confidence Interval of Gross vs. Precipitation low = high =

Bootstrap- Corrcoeff Gross vs. High Temperature Corrcoeff = Bootstrap mean = Bootstrap std = Gross vs. Low Temperature Corrcoeff = Bootstrap mean = Bootstrap std = Gross vs. Precipitation Corrcoeff = Bootstrap mean = Bootstrap std =

Bootstrap-LS Regression Mean Intercept: High Temperature = Std Intercept: High Temperature = Mean slope : High Temperature = e-05 Std slope: High Temperature = e-05 Mean slope : Low Temperature = e-06 Std slope: Low Temperature = e-05 Mean Intercept: Low Temperature = Std Intercept: Low Temperature =

Bootstrap-LS Regression Mean slope : Precipitation = e-07 Std slope: Precipitation= e-07 Mean Intercept: Precipitation = Std Intercept: Precipitation =

Time Series Analysis Periodogram shows a small ½ weekly and a large weekly cycle. Why?

Histogram for Each Day

Conclusions Small correlations relating temperature and precipitation to gross sales. Weak negative slope of temperatures Weak positive slope of precipitation ½ week and weekly cycle of gross sales due to normal popular weekends and release dates of franchise movies. Gross Sales are not influenced by temperature or precipitation

Data Sources “Horticulture Research Farm The University of Georgia.” Georgia Weather. 1 Jan Web. 10 Apr < site=GAWH&report=hi. Matt Carr, Vice President Business Analytics Regal Entertainment Group