DocumentCode :
169894
Title :
Predicting iPhone Sales from iPhone Tweets
Author :
Lassen, Niels Buus ; Madsen, Rene ; Vatrapu, Ravi
Author_Institution :
Dept. of ITM, Copenhagen Bus. Sch., Copenhagen, Denmark
fYear :
2014
fDate :
1-5 Sept. 2014
Firstpage :
81
Lastpage :
90
Abstract :
Recent research in the field of computational social science have shown how data resulting from the widespread adoption and use of social media channels such as twitter can be used to predict outcomes such as movie revenues, election winners, localized moods, and epidemic outbreaks. Underlying assumptions for this research stream on predictive analytics are that social media actions such as tweeting, liking, commenting and rating are proxies for user/consumer´s attention to a particular object/product and that the shared digital artefact that is persistent can create social influence. In this paper, we demonstrate how social media data from twitter can be used to predict the sales of iPhones. Based on a conceptual model of social data consisting of social graph (actors, actions, activities, and artefacts) and social text (topics, keywords, pronouns, and sentiments), we develop and evaluate a linear regression model that transforms iPhone tweets into a prediction of the quarterly iPhone sales with an average error close to the established prediction models from investment banks. This strong correlation between iPhone tweets and iPhone sales becomes marginally stronger after incorporating sentiments of tweets. We discuss the findings and conclude with implications for predictive analytics with big social data.
Keywords :
Big Data; regression analysis; sales management; smart phones; social networking (online); Twitter; big social data; computational social science; election winners; epidemic outbreaks; iPhone sale prediction; iPhone tweets; investment banks; linear regression model; localized moods; movie revenues; predictive analytics; research stream; social graph; social influence; social media actions; social media channels; social text; Companies; Data models; Media; Motion pictures; Predictive models; Twitter; Data science; computational social science; iphone sales; iphone tweets; predictive analytics; social data analytics; twitter;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Enterprise Distributed Object Computing Conference (EDOC), 2014 IEEE 18th International
Conference_Location :
Ulm
ISSN :
1541-7719
Type :
conf
DOI :
10.1109/EDOC.2014.20
Filename :
6972053
Link To Document :
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