SoMin.ai: Personality-Driven Content Generation Platform
- URL: http://arxiv.org/abs/2011.14615v2
- Date: Sun, 17 Jan 2021 11:39:23 GMT
- Title: SoMin.ai: Personality-Driven Content Generation Platform
- Authors: Aleksandr Farseev, Qi Yang, Andrey Filchenkov, Kirill Lepikhin, Yu-Yi
Chu-Farseeva, Daron-Benjamin Loo
- Abstract summary: We showcase the World's first personality-driven marketing content generation platform, called SoMin.ai.
The platform combines deep multi-view personality profiling framework and style generative adversarial networks.
It can be used for the enhancement of the social networking user experience as well as for content marketing routines.
- Score: 60.49416044866648
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this technical demonstration, we showcase the World's first
personality-driven marketing content generation platform, called SoMin.ai. The
platform combines deep multi-view personality profiling framework and style
generative adversarial networks facilitating the automatic creation of content
that appeals to different human personality types. The platform can be used for
the enhancement of the social networking user experience as well as for content
marketing routines. Guided by the MBTI personality type, automatically derived
from a user social network content, SoMin.ai generates new social media content
based on the preferences of other users with a similar personality type aiming
at enhancing the user experience on social networking venues as well
diversifying the efforts of marketers when crafting new content for digital
marketing campaigns. The real-time user feedback to the platform via the
platform's GUI fine-tunes the content generation model and the evaluation
results demonstrate the promising performance of the proposed multi-view
personality profiling framework when being applied in the content generation
scenario. By leveraging content generation at a large scale, marketers will be
able to execute more effective digital marketing campaigns at a lower cost.
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