Multimodal Popularity Prediction of Brand-related Social Media Posts

Brand-related user posts on social networks are growing at a staggering rate, where users express their opinions about brands by sharing multimodal posts. However, while some posts become popular, others are ignored. In this paper, we present an approach for identifying what aspects of posts determine their popularity. We hypothesize that brand-related posts may be popular due to several cues related to factual information, sentiment, vividness and entertainment parameters about the brand. We call the ensemble of cues engagement parameters. In our approach, we propose to use these parameters for predicting brand-related user post popularity. Experiments on a collection of fast food brand-related user posts crawled from Instagram show that: visual and textual features are complementary in predicting the popularity of a post; predicting popularity using our proposed engagement parameters is more accurate than predicting popularity directly from visual and textual features; and our proposed approach makes it possible to understand what drives post popularity in general as well as isolate the brand specific drivers.

[1]  P. Leeflang,et al.  Popularity of Brand Posts on Brand Fan Pages: An Investigation of the Effects of Social Media Marketing , 2012 .

[2]  Dumitru Erhan,et al.  Going deeper with convolutions , 2014, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[3]  Andrew N. Smith,et al.  How Does Brand-related User-generated Content Differ across YouTube, Facebook, and Twitter? , 2012 .

[4]  Xirong Li,et al.  TagBook: A Semantic Video Representation Without Supervision for Event Detection , 2015, IEEE Transactions on Multimedia.

[5]  Bernardo A. Huberman,et al.  Predicting the popularity of online content , 2008, Commun. ACM.

[6]  Alberto Del Bimbo,et al.  Image Popularity Prediction in Social Media Using Sentiment and Context Features , 2015, ACM Multimedia.

[7]  Brian D. Davison,et al.  Predicting popular messages in Twitter , 2011, WWW.

[8]  Hongchul Lee,et al.  Sentiment analysis of twitter audiences: Measuring the positive or negative influence of popular twitterers , 2012, J. Assoc. Inf. Sci. Technol..

[9]  Joemon M. Jose,et al.  "Nobody comes here anymore, it's too crowded"; Predicting Image Popularity on Flickr , 2014, ICMR.

[10]  Cees Snoek,et al.  Latent Factors of Visual Popularity Prediction , 2015, ICMR.

[11]  Arvid Kappas,et al.  Sentiment in short strength detection informal text , 2010, J. Assoc. Inf. Sci. Technol..

[12]  Jeffrey Dean,et al.  Distributed Representations of Words and Phrases and their Compositionality , 2013, NIPS.

[13]  Rongrong Ji,et al.  Large-scale visual sentiment ontology and detectors using adjective noun pairs , 2013, ACM Multimedia.

[14]  Li Fei-Fei,et al.  ImageNet: A large-scale hierarchical image database , 2009, CVPR.

[15]  Kate Ginsberg,et al.  Instabranding: Shaping the Personalities of the Top Food Brands on Instagram , 2015 .

[16]  Dong Liu,et al.  Encoding Concept Prototypes for Video Event Detection and Summarization , 2015, ICMR.

[17]  Raffay Hamid,et al.  What makes an image popular? , 2014, WWW.