Exploration of the possibility of infusing Social Media Trends into
generating NFT Recommendations
- URL: http://arxiv.org/abs/2205.11229v1
- Date: Tue, 3 May 2022 22:14:12 GMT
- Title: Exploration of the possibility of infusing Social Media Trends into
generating NFT Recommendations
- Authors: Dinuka Ravijaya Piyadigama, Guhanathan Poravi
- Abstract summary: The utilization of opinion mining data extracted from trends has been attempted to improve the recommendations.
Social trends to influence the recommendations generated for a set of unique items has been explored.
The proposed Recommendations Architecture in the research presents a method to integrate social trends with recommendations to produce promising outputs.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recommendations Systems have been identified to be one of the integral
elements of driving sales in e-commerce sites. The utilization of opinion
mining data extracted from trends has been attempted to improve the
recommendations that can be provided by baseline methods in this research when
user-click data is lacking or is difficult to be collected due to privacy
concerns.
Utilizing social trends to influence the recommendations generated for a set
of unique items has been explored with the use of a suggested scoring
mechanism. Embracing concepts from decentralized networks that are expected to
change how users interact via the internet over the next couple of decades, the
suggested Recommendations System attempts to make use of multiple sources of
information, applying coherent information retrieval techniques to extract
probable trending items.
The proposed Recommendations Architecture in the research presents a method
to integrate social trends with recommendations to produce promising outputs.
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