Abstract
Content marketing is increasingly important for online branding. However, brand popularity is not yet well-understood form a content marketing perspective.
We used brand popularity and catalog data in combination with product reviews (n = 333 brands). Backward stepwise multiple linear regression was used to develop a predictive model of the brand popularity rank.
We identified highly significant predictive factors for brand rank in our content marketing model: the brand’s data syndication policy, the number of connected e-commerce platforms, and a brand’s catalog size. Our model explains 78% of the variance of Global Brand Rank and has a good and highly significant fit: F (5, 327) = 233.5, p < 0.00001.
We conclude that a content marketing model can adequately predict a global brand's popularity. In this model an open content syndication policy, more connected e-commerce platforms, and catalog size are each related to a better (lower) Global Brand Rank score.
Supplementary materials
Title
Dataset used with brand data in relation to content marketing
Description
In this file the used brand popularity (Brand Popularity Rank) and catalog data in combination with product reviews from an independent content aggregator. For all datasets, we selected the overlapping dataset for brand popularity and brand reviews based on a period of 90 days from June 10, 2022, till September 24, 2022 (n = 333 brands).
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