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Published in: The Review of Socionetwork Strategies 2/2022

01-09-2022 | Article

ID-POS Data Analysis Using TV Commercial Viewership Data

Authors: Taizo Horikomi, Mariko I. Ito, Takaaki Ohnishi

Published in: The Review of Socionetwork Strategies | Issue 2/2022

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Abstract

To demonstrate the short-term advertising effects of TV commercials on shoppers, we examined the relationship between TV commercial airing and purchase timing using three types of data: TV metadata, TV viewership data, and ID-POS data. Specifically, we selected some product brands and analyzed the relationship between the gross rating point (GRP) time series and purchase timing for those brands. We selected 54 product brands in eight categories that frequently run TV commercials, including beer, carbonated beverages, instant noodles, and laundry detergents. The ID-POS data contain purchase data (over 20 million lines) for approximately 500,000 IDs shopping at approximately 70 supermarkets in the Kanto area, Japan. A no-correlation test for GRP and purchase timing using random sampling revealed a significant correlation between GRP and purchase timing for many selected brands. We further examined advertising effects from various angles by aggregating data by store, product category, product brand, and customer attributes (sex and age). The results showed some intriguing characteristics of TV commercials’ effects specific to each product brand or each customer attribute, such as the fact that older shoppers are more likely to be influenced by TV commercials, whereas shoppers at low-end stores are more likely to be influenced. In addition, by applying customer IDs to clustering, it was found that approximately 4.8% of all shoppers responded evenly to TV commercials for all brands.

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Footnotes
1
“Customer ID” in our study means an identification necessary for research purposes and does not include any personal information, nor does it mean a personal identification code. Similarly, ID-POS data are processed so that individuals cannot be identified by aggregating data by customer ID, store, date, and product.
 
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Metadata
Title
ID-POS Data Analysis Using TV Commercial Viewership Data
Authors
Taizo Horikomi
Mariko I. Ito
Takaaki Ohnishi
Publication date
01-09-2022
Publisher
Springer Nature Singapore
Published in
The Review of Socionetwork Strategies / Issue 2/2022
Print ISSN: 2523-3173
Electronic ISSN: 1867-3236
DOI
https://doi.org/10.1007/s12626-022-00116-w

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