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DOI:  https://doi.org/10.36719/2663-4619/114/64-67

Sabina Ismayilova

Baku State University

Master student

https://orcid.org/0009-0001-5566-4715

sebine.ismayilova122@gmail.com

 

The Power of Data Analytics-Transforming Marketing Strategies

For Fashion Brands

 

Abstract

 

Relevance of the study-This study is crucial because it examines how fashion firms may use data analytics to inform their marketing choices, increasing sales and consumer engagement. In light of the fashion industry's increasing rivalry, firms may better understand customer behavior, forecast trends, and maximize advertising efforts by utilizing analytics. The report emphasizes how companies can optimize return on investment, improve client experiences, and customize marketing efforts. Fashion brands may maintain their competitiveness in the always changing digital world by comprehending the importance of data analytics.

Limitation of research-Notwithstanding its importance, this study has drawbacks, including the possibility of algorithmic biases, the need for precise data collecting, and data privacy issues. All fashion firms, especially smaller ones, may not always have access to high-quality data, which is necessary for data analytics to be effective. Furthermore, given how quickly consumer preferences and technology are evolving, certain conclusions may become old very quickly. Last but not least, incorporating analytics into marketing plans necessitates a large financial outlay that not many companies can afford.

Keywords: fashion and data, social media, education, search engine optimization marketing, artificial intelligence, predictive analytics, user experience


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