An Integrated Approach for Improving Brand Consistency of Web Content:
Modeling, Analysis and Recommendation
- URL: http://arxiv.org/abs/2011.09754v3
- Date: Sat, 14 Aug 2021 21:56:19 GMT
- Title: An Integrated Approach for Improving Brand Consistency of Web Content:
Modeling, Analysis and Recommendation
- Authors: Soumyadeep Roy, Shamik Sural, Niyati Chhaya, Anandhavelu Natarajan,
Niloy Ganguly
- Abstract summary: We collect around 300K web page content from around 650 companies.
We develop trait-specific classification models by considering the linguistic features of the content.
We then develop a sentence ranking system that outputs the top three sentences that need to be changed for making a web article more consistent with the company's brand personality.
- Score: 27.312543486663536
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A consumer-dependent (business-to-consumer) organization tends to present
itself as possessing a set of human qualities, which is termed as the brand
personality of the company. The perception is impressed upon the consumer
through the content, be it in the form of advertisement, blogs or magazines,
produced by the organization. A consistent brand will generate trust and retain
customers over time as they develop an affinity towards regularity and common
patterns. However, maintaining a consistent messaging tone for a brand has
become more challenging with the virtual explosion in the amount of content
which needs to be authored and pushed to the Internet to maintain an edge in
the era of digital marketing. To understand the depth of the problem, we
collect around 300K web page content from around 650 companies. We develop
trait-specific classification models by considering the linguistic features of
the content. The classifier automatically identifies the web articles which are
not consistent with the mission and vision of a company and further helps us to
discover the conditions under which the consistency cannot be maintained. To
address the brand inconsistency issue, we then develop a sentence ranking
system that outputs the top three sentences that need to be changed for making
a web article more consistent with the company's brand personality.
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