Total Sales all Regions and Channels
$3,941,901
Total Sales - Fresh Category
$1,319,554
Number of Locations
124
Original Set of Research Questions Here
Insights 1
Insights 2
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Channel | Fresh | Milk | Grocery | Frozen | Soap | Deli |
---|---|---|---|---|---|---|
Hotel_Cafe | 48% | 13.0% | 16% | 15% | 3% | 4.5% |
Retail_Store | 14% | 21.9% | 38% | 4% | 18% | 3.4% |
Region | Channel | Total | Fresh | Grocery | Milk | Frozen | Soap | Deli |
---|---|---|---|---|---|---|---|---|
Lisbon | Hotel_Cafe | $1,538,342 | $761,233 | $237,542 | $228,342 | $184,512 | $56,081 | $70,632 |
Lisbon | Retail_Store | $848,471 | $93,600 | $332,495 | $194,112 | $46,514 | $148,055 | $33,695 |
Porto | Hotel_Cafe | $719,150 | $326,215 | $123,074 | $64,519 | $160,861 | $13,516 | $30,965 |
Porto | Retail_Store | $835,938 | $138,506 | $310,200 | $174,625 | $29,271 | $159,795 | $23,541 |
SEGMENTATION MODEL INSIGHTS
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CHANNEL CLASSIFICATION MODEL INSIGHTS
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Observations | 124 |
Dependent variable | Channel.b |
Type | OLS linear regression |
F(2,121) | 75.72 |
R² | 0.56 |
Adj. R² | 0.55 |
Est. | S.E. | t val. | p | |
---|---|---|---|---|
(Intercept) | -0.70 | 0.17 | -4.18 | 0.00 |
pctFresh | -0.35 | 0.13 | -2.58 | 0.01 |
log(Detergents_Paper) | 0.17 | 0.02 | 8.43 | 0.00 |
Standard errors: OLS |