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arxiv: 1804.02233 · v2 · pith:IFFNQ22Mnew · submitted 2018-04-06 · 💻 cs.SI · cs.CL· cs.CY· econ.TH

Forex trading and Twitter: Spam, bots, and reputation manipulation

classification 💻 cs.SI cs.CLcs.CYecon.TH
keywords tradingtwitterstancetweetscurrencyforexlargemanipulation
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Currency trading (Forex) is the largest world market in terms of volume. We analyze trading and tweeting about the EUR-USD currency pair over a period of three years. First, a large number of tweets were manually labeled, and a Twitter stance classification model is constructed. The model then classifies all the tweets by the trading stance signal: buy, hold, or sell (EUR vs. USD). The Twitter stance is compared to the actual currency rates by applying the event study methodology, well-known in financial economics. It turns out that there are large differences in Twitter stance distribution and potential trading returns between the four groups of Twitter users: trading robots, spammers, trading companies, and individual traders. Additionally, we observe attempts of reputation manipulation by post festum removal of tweets with poor predictions, and deleting/reposting of identical tweets to increase the visibility without tainting one's Twitter timeline.

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