Social media optimization: Identifying an optimal strategy for increasing network size on Facebook

Social media optimization: Identifying an optimal strategy for increasing network size on Facebook

0.00 Avg rating0 Votes
Article ID: iaor201529952
Volume: 59
Issue: 4
Start Page Number: 15
End Page Number: 25
Publication Date: Mar 2016
Journal: Omega
Authors: , ,
Keywords: social, optimization, networks
Abstract:

This paper aims to create an expert system that yields an optimal strategy for increasing network size on Facebook. Data were obtained from 5488 Facebook users by means of a custom-built Facebook application. We computed a total of 426 variables. Using these data we estimated a predictive model of network size which is subsequently used in a prescriptive model. The former is estimated with Random Forest and the latter with a Genetic Algorithm. The results indicate that the proposed expert system can identify an optimal social media strategy. The system delivers concrete recommendations about, for example, the optimal time between status updates. The analysis reveals that network size can be increased by 61% if the optimal strategy is adopted. This study contributes to literature in the following two ways. First it devises a novel prescriptive social media expert system relying on an unprecedented variety of social media data. The results indicate that the system is effective and a viable strategic tool for increasing network size. Second it provides a list of the top drivers allowing future research to build similar systems efficiently.

Reviews

Required fields are marked *. Your email address will not be published.