연구 영역
기본 정보
논문·특허
구성원
Article|
·
인용수 1
·2024
Enhancing social media post popularity prediction with visual content
Dahyun Jeong, 손혜림, 최연진, 김건우
IF 0.026 (KCI 2024) Journal of the Korean Statistical Society
초록

Our study presents a framework for predicting image-based social media content popularity that focuses on addressing complex image information and a hierarchical data structure. We utilize the Google Cloud Vision API to effectively extract key image and color information from users’ postings, achieving 6.8% higher accuracy compared to using non-image covariates alone. For prediction, we explore a wide range of prediction models, including Linear Mixed Model, Support Vector Regression, Multi-layer Perceptron, Random Forest, and XGBoost, with linear regression as the benchmark. Our comparative study demonstrates that models that are capable of capturing the underlying nonlinear interactions between covariates outperform other methods.

키워드
Popularity predictionSocial media data analysisImage contents miningNon-linear data structure
타입
Article
IF / 인용수
0.026 / 1
게재 연도
2024