Prediction from regional angst – A study of NFL sentiment in Twitter using technical stock market charting

作者:

Highlights:

• Gathered NFL tweet sentiment to predict outcomes and wagering decisions

• Used difference in moving averages for optimal wagering return ($14.84/game)

• Sentiment exhibiting a golden cross netted $48.18/game returns

• Fans were able to signal winning teams by their change in sentiment.

摘要

To predict NFL game outcomes, we examine the application of technical stock market techniques to sentiment gathered from social media. From our analysis we found a $14.84 average return per sentiment-based wager compared to a $12.21 average return loss on the entire 256 games of the 2015–2016 regular season if using an odds-only approach. We further noted that wagers on underdogs (i.e., the less favored teams) that exhibit a “golden cross” pattern in sentiment (e.g., the most recent sentiment signal crosses the longer baseline sentiment), netted a $48.18 return per wager on 41 wagers. These results show promise of cross-domain research and we believe that applying stock market techniques to sports wagering may open an entire new research area.

论文关键词:Business intelligence,Decision support,Sentiment analysis,Sports analytics

论文评审过程:Received 28 January 2017, Revised 13 April 2017, Accepted 26 April 2017, Available online 29 April 2017, Version of Record 20 May 2017.

论文官网地址:https://doi.org/10.1016/j.dss.2017.04.010