Cognitive Affiliate Platforms: Revolutionizing Marketing Strategies through AI-driven Intelligence

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Laxmi Srinivas Samayamantri

Abstract

The research paper explores the transformative landscape of affiliate marketing through the lens of cognitive technologies. Titled "Cognitive Affiliate Platforms: Revolutionizing Marketing Strategies through AI-driven Intelligence," the study delves into the integration of artificial intelligence (AI) in affiliate platforms, unveiling its impact on marketing strategies and affiliate performance. By employing advanced machine learning algorithms, these platforms enhance the precision of target audience identification, optimize content recommendations, and dynamically adapt to evolving market trends. The abstract aims to illuminate the intersection of cognitive technologies and affiliate marketing, providing insights into the unprecedented opportunities and challenges arising from this innovative fusion. Through a comprehensive examination of case studies and empirical analyses, the paper contributes to the understanding of how cognitive affiliate platforms redefine marketing dynamics and propel the industry into a new era of intelligent and adaptive promotion.

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Cognitive Affiliate Platforms: Revolutionizing Marketing Strategies through AI-driven Intelligence. (2023). International Machine Learning Journal and Computer Engineering, 6(6), 1-9. https://mljce.in/index.php/Imljce/article/view/23
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How to Cite

Cognitive Affiliate Platforms: Revolutionizing Marketing Strategies through AI-driven Intelligence. (2023). International Machine Learning Journal and Computer Engineering, 6(6), 1-9. https://mljce.in/index.php/Imljce/article/view/23

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