Title Solutions of brand posts on Facebook to increase customer engagement using the random forest prediction model /
Authors Vaiciukynaite, Egle ; Zickute, Ineta ; Salkevicius, Justas
DOI 10.1007/978-3-031-11371-0_9
ISBN 9783031113703
eISBN 9783031113710
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Is Part of Artificiality and sustainability in entrepreneurship: exploring the unforeseen, and paving the way to a sustainable future / editors R. Adams, D. Grichnik, A. Pundziene, C. Volkmann.. Cham : Springer, 2023. p. 191-214.. ISBN 9783031113703. eISBN 9783031113710
Keywords [eng] customer engagement behaviour ; emoji ; social media ; machine learning ; posts ; random forest
Abstract [eng] This paper aims to predict customer engagement behaviour (CEB), i.e. likes, shares, comments, and emoji reactions, on company posts on Facebook. A sample of 1109 brand posts from Facebook pages in Lithuania was used. The Random Forest method was used to train models to predict customer engagement behaviour based on features including time frame, content, and media types of brand posts. The data was used for training nine binary classification models using the Random Forest method, which can predict the popularity of a company’s posts. In terms of social score, accuracy of likes, comments, and shares varied from 68.4% (likes on a post) to 84.0% (comments on a post). For emotional responses, accuracy varied from 65.6% (‘wow’ on a post) to 82.5% (‘ha ha’ on a post). The data was collected from one single media platform and country, and encompassed emotional expressions at an early stage on Facebook. The findings of Random Forest prediction models can help organisations to make more efficient solutions for brand posts on Facebook to increase customer engagement. This paper outlines the first steps in creating a predictive engagement score towards diverse types of brand posts on Facebook. The same approach to features of brand posts might be applied to other social media platforms such as Instagram and LinkedIn.
Published Cham : Springer, 2023
Type Book part
Language English
Publication date 2023
CC license CC license description