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.
翻译:社交媒体营销在向广大受众推广品牌和产品价值方面发挥着至关重要的作用。 为了提高广告收入,全球媒体购买Facebook Ads等平台时不断减少品牌有机广告的影响力,推动品牌在付费媒体广告上花费更多资金。 为了高效运行有机和付费社交媒体营销,有必要理解受众,调整内容以适应其利益和在线行为,这是无法大规模手工操作的。与此同时,各种个性类型分类计划,如Myers-Briggs人格类型等,通过统一和有条不紊地对受众行为进行分类,使得有可能在更大范围内披露个性特征和用户内容偏好之间的依赖性。 研究界尚未深入研究这一问题,尽管尚未广泛利用和全面评价不同个性特征对内容准确性的影响。 具体地说,在这项工作中,我们通过应用创新的个性驱动多视角建议系统,即个人性化内容建议设计师性化建议引擎,或者 PersiC, 将人类实验结果和直位性特征分析选项, 也显示真实性化的动作性能研究, 将人类实验结果和直观性―― 测试性标本级案例研究, 也显示人类驱动性能的多。