Low-hanging fruit from
tweet sentiment investing plucked: James Saft
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[September 01, 2016]
By James Saft
(Reuters) - It was fun while it lasted:
the easy money from Twitter sentiment trading appears to have been
already gathered.
While it is still true, according to a new study, that tweets can be
used to predict contemporaneous and future stock market movements,
the effect is weakening.
The upshot: investors have figured out Twitter’s predictive value
and are arbitraging the opportunity away.
Several studies over the past few years have shown that measures of
sentiment contained in tweets can be predictive for financial
markets, notably a paper this year which showed that tweets on Fed
monetary policy meetings can be profitably used.
(http://papers.ssrn.com/sol3/papers.cfm?abstract_id=2756815)
The basic idea: take tweets, score them for sentiment, machine read
and presto, you’ve got your buy or sell signal.
The latest paper, released in August by Jim Kyung-Soo Liew and Tamás
Budavári of Johns Hopkins, does demonstrate interesting indications
of a so-called Granger causality, a statistical measure that one
data series is predicting another, between tweet sentiment and
market moves. (http://papers.ssrn.com/sol3/papers.cfm?abstract_id=2820269)
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“We report statistically significant evidence that the market
returns Granger-cause next day's sentiment movements. Moreover, in
the most recent period of 2015, our rolling analysis shows
significant evidence that the tweet sentiments actually
Granger-caused the market to move!,” the authors write.
That’s great news, but perhaps more for science than for investors.
As the study went on and as investors got wise to the phenomenon,
the effect diminished.
“Our results support the notion of a highly efficient market that
has rapidly digested and processed such tweets sentiment data,”
according to the study.
“We argue that as more machine-learning financial engineers learnt
how to convert tweets into sentiment and passed their knowledge to
the traders or programmed up algorithms to capitalize on, the
predictive relationship deteriorated as the prices adjusted
accordingly. Thus by the end of 2015, the trade has become widely
known and the predictive nature of tweet sentiment waned.”
The authors, in an earlier paper, even went so far as to posit that
social media should be added as a “Sixth Factor” to the original
five posited by Fama and French as driving stock returns. (http://papers.ssrn.com/sol3/Papers.cfm?abstract_id=2711825)
THE FUTURE GETS EVENLY DISTRIBUTED FASTER
The study looked at tweets on the StockTwits social media investment
platform and then used a variety of approaches to sentiment scoring
them from bearish to bullish, and was limited to tweets that were
about the S&P 500 or a trading derivative of the index.
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A man types on his mobile phone as he sits along a boardwalk in San
Diego, California, November 6, 2013. REUTERS/Mike Blake
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There was genuine predictive value, according to the study. During 2015 there
was a bit of a self-fulfilling cycle happening, with market returns driving
sentiment, which in turn went on to drive market returns, albeit only for brief
periods.
They note that, in only looking at tweets about a broad index, the results
indicate that there could be valuable signals from tweets about specific
companies.
“We suspect such a relationship, if it exists, should be kept secret.”
Really what is described here is amazing. In about half a decade a huge and deep
new data source was first developed, then analyzed and then the results of this
analysis were arbitraged away by clued-in traders.
To be sure, it would be foolish to bet against human ingenuity, and wrong to
conclude that sentiment scoring can’t be profitable.
Still, this is an instructive example of how technology works, both in the
economy and in relationship to investment. In subtle ways it illustrates how
easy it is to assign a high capital value to a new technology, or in this case
to a new use of a technology, only to see that value diminished greatly as the
technology spreads and is employed by more people.
This phenomenon seems to be something which is happening faster now than in the
past. Think of the advantage that traders got from first the carrier pigeon and
then the cable. Both of those retained the bulk of their advantage for longer,
being slower to spread, than current versions of similar advantages like tweet
sentiment scoring.
When things are digitized and processing power is so cheap, all of these kinds
of advantages will tend to have a shorter life.
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William Gibson’s observation “The future is already here – it's just not evenly
distributed” is true, but the lag in distribution is getting shorter all the
time. This argues for placing a lower capital value on a given advantage as the
pace of change quickens.
That’s a lesson investors in new technology would do well to note.
(Editing by James Dalgleish)
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