Image Popularity Prediction
Předpovídání popularity obrázků
diploma thesis (DEFENDED)
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Permanent link
http://hdl.handle.net/20.500.11956/192561Identifiers
Study Information System: 247872
Collections
- Kvalifikační práce [11244]
Author
Advisor
Referee
Hajič, Jan
Faculty / Institute
Faculty of Mathematics and Physics
Discipline
Artificial Intelligence
Department
Department of Theoretical Computer Science and Mathematical Logic
Date of defense
5. 9. 2023
Publisher
Univerzita Karlova, Matematicko-fyzikální fakultaLanguage
English
Grade
Excellent
Keywords (Czech)
{Deep Learning}|{Convolutional Neural Networks}|{Language models}|{Sentiment Analysis}Keywords (English)
{Deep Learning}|{Convolutional Neural Networks}|{Language models}|{Sentiment Analysis}In this thesis, we compare deep learning models for the purpose of predicting the popularity of social media posts. We curated a comprehensive dataset from a renowned social media platform, encompassing a rich variety of features in- cluding images, text captions, and social attributes. Each model's performance was evaluated based on Mean Squared Error, Mean Absolute Error, and Spear- man's rank correlation coefficient. Our model, integrating convolutional neural networks for visual inputs, transformer-based models for text, and layers for social inputs, achieved a higher composite score across all evaluation metrics in contrast to the baseline model. Enhancements such as the addition of a caption network, sentiment analysis, and the removal of scaling further boosted the per- formance. This study illuminates the potential of deep learning in improving the precision of popularity prediction for social media posts. 1