Checking financial markets via Benford’s law: the S&P 500 case 97
looking at chi-square as a distance, the empirical probability distributions are closer to
Benford’s law than to the uniform probability distribution. In this sense we agree with
Ley (see [8]) claiming that the distributions of the first significant digit of prices and
returns essentially follow Benford’s law. In other terms, the S&P 500 stock market
behaviour as a whole in the period August 14, 1995 to October 17, 2007 can be
considered as “ordinary”.
Finally, we observe that the empirical probability distribution related to returns is
significantly closer to Benford’s law than the empirical probability distributionrelated
to prices. In particular, the latter is 19.77 times further away from Benford’s law than
the former. This evidence is theoretically coherent with that stated in the paper of
Pietroneroet al.(see [11]), since logarithmic returns are obtained from prices by a
multiplicative process.
4.2 Day-by-day analysis
Here, we address our attention to returns since their empirical probability distribution
is closer to Benford’s law than that of prices. We day-by-day perform the same kind
of analysis considered in the previous subsection, but only with respect to Benford’s
law.
Over the investigated 3067 days, the null is rejected 1371 times, i.e., in about
44.70% of cases. In Figure 2 we represent the values of the day-by-day calculated chi-
square goodness-of-fit tests (the horizontal white line indicates the value ofχ 82 , 0. 05 ).
Day-by-day analysis with respect to returns: 14 August, 1995 – 17 October, 2007
0.00
25.00
50.00
75.00
100.00
125.00
150.00
175.00
200.00
225.00
250.00
275.00
Aug
ust
14,
1995
Feb
ruar
y^14
,^1996
Aug
ust
14,
1996
Feb
ruar
y^14
,^1997
Aug
ust
14,
1997
Feb
ruar
y^14
,^1998
Aug
ust
14,
1998
Feb
ruar
y^14
,^1999
Aug
ust
14,
1999
Feb
ruar
y^14
,^2000
Aug
ust
14,
2000
Feb
ruar
y^14
,^2001
Aug
ust
14,
2001
Feb
ruar
y^14
,^2002
Aug
ust
14 ,
2002
Feb
ruar
y^14
,^2003
Aug
ust
14,
2003
Feb
ruar
y^14
,^2004
Aug
ust
14,
2004
Feb
ruar
y^14
,^2005
Aug
ust
14,
2005
Feb
ruar
y^14
,^2006
Aug
ust
14,
2006
Feb
ruar
y^14
,^2007
Aug
ust
14,
2007
Time
Computed chi-square
Fig. 2.Day-by-day calculated chi-square