Example: Perceptions of Coffee Brands

The previous example involved a small table of hypothetical data. Actual applications often involve much larger tables. In this example, you will use data pertaining to perceived images of six iced-coffee brands 1. This dataset can be found in coffee.sav. See the topic Sample Files for more information.

For each of 23 iced-coffee image attributes, people selected all brands that were described by the attribute. The six brands are denoted as AA, BB, CC, DD, EE, and FF to preserve confidentiality.

Table 1. Iced-coffee attributes
Image attribute Label Image attribute Label
good hangover cure cure fattening brand fattening
low fat/calorie brand low fat appeals to men men
brand for children children South Australian brand South Australian
working class brand working traditional/old fashioned brand traditional
rich/sweet brand sweet premium quality brand premium
unpopular brand unpopular healthy brand healthy
brand for fat/ugly people ugly high caffeine brand caffeine
very fresh fresh new brand new
brand for yuppies yuppies brand for attractive people attractive
nutritious brand nutritious tough brand tough
brand for women women popular brand popular
minor brand minor    

Initially, you will focus on how the attributes are related to each other and how the brands are related to each other. Using principal normalization spreads the total inertia once over the rows and once over the columns. Although this prevents biplot interpretation, the distances between the categories for each variable can be examined.

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1 Kennedy, R., C. Riquier, and B. Sharp. 1996. Practical applications of correspondence analysis to categorical data in market research. Journal of Targeting, Measurement, and Analysis for Marketing, 5, 56-70.