Personality-Driven Social Multimedia Content Recommendation
- URL: http://arxiv.org/abs/2207.12236v1
- Date: Mon, 25 Jul 2022 14:37:18 GMT
- Title: Personality-Driven Social Multimedia Content Recommendation
- Authors: Qi Yang, Sergey Nikolenko, Alfred Huang, Aleksandr Farseev
- Abstract summary: We investigate the impact of human personality traits on the content recommendation model by applying a novel personality-driven multi-view content recommender system.
Our experimental results and real-world case study demonstrate not just PersiC's ability to perform efficient human personality-driven multi-view content recommendation, but also allow for actionable digital ad strategy recommendations.
- Score: 68.46899477180837
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Social media marketing plays a vital role in promoting brand and product
values to wide audiences. In order to boost their advertising revenues, global
media buying platforms such as Facebook Ads constantly reduce the reach of
branded organic posts, pushing brands to spend more on paid media ads. In order
to run organic and paid social media marketing efficiently, it is necessary to
understand the audience, tailoring the content to fit their interests and
online behaviours, which is impossible to do manually at a large scale. At the
same time, various personality type categorization schemes such as the
Myers-Briggs Personality Type indicator make it possible to reveal the
dependencies between personality traits and user content preferences on a wider
scale by categorizing audience behaviours in a unified and structured manner.
This problem is yet to be studied in depth by the research community, while the
level of impact of different personality traits on content recommendation
accuracy has not been widely utilised and comprehensively evaluated so far.
Specifically, in this work we investigate the impact of human personality
traits on the content recommendation model by applying a novel
personality-driven multi-view content recommender system called Personality
Content Marketing Recommender Engine, or PersiC. Our experimental results and
real-world case study demonstrate not just PersiC's ability to perform
efficient human personality-driven multi-view content recommendation, but also
allow for actionable digital ad strategy recommendations, which when deployed
are able to improve digital advertising efficiency by over 420% as compared to
the original human-guided approach.
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