Instagram Post Popularity Trend Analysis and
Prediction using Hashtag, Image Assessment, and User History Features
Kristo Radion Purba, David Asirvatham, and Raja Kumar Murugesan
School of Computer Science and
Engineering, Taylor's University, Malaysia
Abstract: Instagram
is one of the most popular social networks for marketing. Predicting the popularity
of a post on Instagram is important to determine the influence of a user for
marketing purposes. There were studies on popularity prediction on Instagram
using various features and datasets. However, they haven't fully addressed the
challenge of data variability of the global dataset, where they either used
local datasets or discretized output. This research compared several regression
techniques to predict the Engagement Rate (ER) of posts using a global dataset.
The prediction model, coupled with the results of the popularity trend
analysis, will have more utility for a larger audience compared to existing
studies. The features were extracted from hashtags, image analysis, and user
history. It was found that image quality, posting time, and type of image
highly impact ER. The prediction accuracy reached up to 73.1% using the Support
Vector Regression (SVR), which is higher than previous studies on a global
dataset. User history features were useful in the prediction since the data
showed a high variability of ER if compared to a local dataset. The added
manual image assessment values were also among the top predictors.
Keywords: Social media, Instagram, popularity trend, machine
learning, prediction model.
Received February 17, 2020; accepted August 6, 2020