Social Influences in Recommendation Systems
Diyah Puspitaningrum

TL;DR
This paper explores how incorporating social network information into recommendation algorithms can improve the quality and scalability of tag suggestions in social media platforms.
Contribution
It introduces social-aware variants of association rule-based tag recommendation methods, leveraging social contacts and groups to enhance accuracy and efficiency.
Findings
Social information improves recommendation quality.
Batch processing enhances scalability.
Social variants outperform generic approaches.
Abstract
Social networking sites such as Flickr and Facebook allow users to share content with family, friends, and interest groups. Also, tags can often assign to resources. In the previous research using few association rules FAR, we have seen that high-quality and efficient association-based tag recommendation is possible, but the set-up that we considered was very generic and did not take social information into account. The proposed method in the previous paper, FAR, in particular, exhibited a favorable trade-off between recommendation quality and runtime. Unfortunately, recommendation quality is unlikely to be optimal because the algorithms are not aware of any social information that may be available. Two proposed approaches take a more social view on tag recommendation regarding the issue: social contact variants and social groups of interest. The user data is varied and used as a source…
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