Quantitative understanding of human behaviors provides elementary
comprehension of the complexity of many human-initiated systems. In this paper,
we investigate the behavior of people on the $BBS$ forum by the statistical
analysis of the amounts of view and reply of posts. According to our
statistics, we find that the amounts of view and reply of posts follow the
power law distributions with different power exponent. Furthermore, we discover
that the amounts of view and reply of posts have nonlinear relationship. They
are related by power function and show us straight line in log-log plot. Based
on the estimation of slope and intercept of the line, we can characterize the
behaviors quantitatively and know that people of Chinese forum and those of
foreign forum have different preference towards replying to and viewing the
posts. At last, we analyze the burstiness and memory in replying time series.
They show some universal properties among different forum. All of them locate
themselves in the high-$B$, low-$M$ region.
A way to fight your traffic tickets. The paper was awarded a special prize of
$400 that the author did not have to pay to the state of California.
<br />In view of enormous, extremely surprising and completely unexpected public
interest to this work, we have added an appendix answering the two most common
questions.
This Chapter is written for the Festschrift celebrating the 70th birthday of
the distinguished economist Duncan Foley from the New School for Social
Research in New York. This Chapter reviews applications of statistical physics
methods, such as the principle of entropy maximization, to the probability
distributions of money, income, and global energy consumption per capita. The
exponential probability distribution of wages, predicted by the statistical
equilibrium theory of a labor market developed by Foley in 1996, is supported
by empirical data on income distribution in the USA for the majority (about
97%) of population. In addition, the upper tail of income distribution (about
3% of population) follows a power law and expands dramatically during financial
bubbles, which results in a significant increase of the overall income
inequality. A mathematical analysis of the empirical data clearly demonstrates
the two-class structure of a society, as pointed out Karl Marx and recently
highlighted by the Occupy Movement. Empirical data for the energy consumption
per capita around the world are close to an exponential distribution, which can
be also explained by the entropy maximization principle.
Prediction markets show considerable promise for developing flexible
mechanisms for machine learning. Here, machine learning markets for
multivariate systems are defined, and a utility-based framework is established
for their analysis. This differs from the usual approach of defining static
betting functions. It is shown that such markets can implement model
combination methods used in machine learning, such as product of expert and
mixture of expert approaches as equilibrium pricing models, by varying agent
utility functions. They can also implement models composed of local potentials,
and message passing methods. Prediction markets also allow for more flexible
combinations, by combining multiple different utility functions. Conversely,
the market mechanisms implement inference in the relevant probabilistic models.
This means that market mechanism can be utilized for implementing parallelized
model building and inference for probabilistic modelling.
We investigate the structure of the profit landscape obtained from the most
basic, fluctuation based, trading strategy applied for the daily stock price
data. The strategy is parameterized
9c5
by only two variables, p and q. Stocks are
sold and bought if the log return is bigger than p and less than -q,
respectively. Repetition of this simple strategy for a long time gives the
profit defined in the underlying two-dimensional parameter space of p and q. It
is revealed that the local maxima in the profit landscape are spread in the
form of a fractal structure. The fractal structure implies that successful
strategies are not localized to any region of the profit landscape and are
neither spaced evenly throughout the profit landscape, which makes the
optimization notoriously hard and hypersensitive for partial or limited
information. The concrete implication of this property is demonstrated by
showing that optimization of one stock for future values or other stocks
renders worse profit than a strategy that ignores fluctuations, i.e., a
long-term buy-and-hold strategy.
The existence of imitative behavior among consumers is a well-known phenomenon in the field of Economics. This behavior is especially common in markets determined by a high degree of innovation, asymmetric information and/or price-inelastic demand, features that exist in the pharmaceutical market. This paper presents evidence of the existence of imitative behavior among primary care physicians in Galicia (Spain) when choosing treatments for their patients. From this and other evidence, we propose a dynamic model for determining the entry of new drugs into the market. To do this, we introduce the structure of the organization of primary health care centers and the presence of groups of doctors who are specially interrelated, as well as the existence of commercial pressure on doctors. For modeling purposes, physicians are treated as spins connected in an exponentially distributed complex network of the Watts-Strogatz type. The proposed model provides an explanation for the differences observed in the patterns of the introduction of technological innovations in different regions. The main cause of these differences is the different structure of relationships among consumers, where the existence of small groups that show a higher degree of coordination over the average is particularly influential. The evidence presented, together with the proposed model, might be useful for the design of optimal strategies for the introduction of new drugs, as well as for planning policies to manage pharmaceutical expenditure.
Predicting X from Twitter is a popular fad within the Twitter research
subculture. It seems both appealing and relatively easy. Among such kind of
studies, electoral prediction is maybe the most attractive, and at this moment
there is a growing body of literature on such a topic. This is not only an
interesting research problem but, above all, it is extremely difficult.
However, most of the authors seem to be more interested in claiming positive
results than in providing sound and reproducible methods. It is also especially
worrisome that many recent papers seem to only acknowledge those studies
supporting the idea of Twitter predicting elections, instead of conducting a
balanced literature review showing both sides of the matter. After reading many
of such papers I have decided to write such a survey myself. Hence, in this
paper, every study relevant to the matter of electoral prediction using social
media is commented. From this review it can be concluded that the predictive
power of Twitter regarding elections has been greatly exaggerated, and that
hard research problems still lie ahead.
The aim of this article is to briefly review and make new studies of
correlations and co-movements of stocks, so as to understand the
"seasonalities" and market evolution. Using the intraday data of the CAC40, we
begin by reasserting the findings of Allez and Bouchaud [New J. Phys. 13,
025010 (2011)]: the average correlation between stocks increases throughout the
day. We then use multidimensional scaling (MDS) in generating maps and
visualizing the dynamic evolution of the stock market during the day. We do not
find any marked difference in the structure of the market during a day. Another
aim is to use daily data for MDS studies, and visualize or detect specific
sectors in a market and periods of crisis. We suggest that this type of
visualization may be used in identifying potential pairs of stocks for "pairs
trade".
FuturICT foundations are social science, complex systems science, and ICT.
The main concerns and challenges in the science of complex systems in the
context of FuturICT are laid out in this paper with special emphasis on the
Complex Systems route to Social Sciences. This include complex systems having:
many heterogeneous interacting parts; multiple scales; complicated transition
laws; unexpected or unpredicted emergence; sensitive dependence on initial
conditions; path-dependent dynamics; networked hierarchical connectivities;
interaction of autonomous agents; self-organisation; non-equilibrium dynamics;
combinatorial explosion; adaptivity to changing environments; co-evolving
subsystems; ill-defined boundaries; and multilevel dynamics. In this context,
science is seen as the process of abstracting the dynamics of systems from
data. This presents many challenges including: data gathering by large-scale
experiment, participatory sensing and social computation, managing huge
distributed dynamic and heterogeneous databases; moving from data to dynamical
models, going beyond correlations to cause-effect relationships, understanding
the relationship between simple and comprehensive models with appropriate
choices of variables, ensemble modeling and data assimilation, modeling systems
of systems of systems with many levels between micro and macro; and formulating
new approaches to prediction, forecasting, and risk, especially in systems that
can reflect on and change their behaviour in response to predictions, and
systems whose apparently predictable behaviour is disrupted by apparently
unpredictable rare or extreme events. These challenges are part of the FuturICT
agenda.
The aim of this paper is twofold: to provide a theoretical framework and to
give further empirical support to Shiller's test of the appropriateness of
prices in the stock market based on the Cycli
b14
cally Adjusted Price Earnings
(CAPE) ratio. We devote the first part of the paper to the empirical analysis
and we show that the CAPE is a powerful predictor of future long run
performances of the market not only for the U.S. but also for countries such as
Belgium, France, Germany, Japan, the Netherlands, Norway, Sweden and
Switzerland. We show four relevant empirical facts: i) the striking ability of
the logarithmic averaged earning over price ratio to predict returns of the
index, ii) how this evidence increases switching from returns to gross returns,
iii) moving over different time horizons, the regression coefficients are
constant in a statistically robust way, and iv) the poorness of the prediction
when the precursor is adjusted with long term interest rate. In the second part
we provide a theoretical justification of the empirical observations. Indeed we
propose a simple model of the price dynamics in which the return growth depends
on three components: a) a momentum component, naturally justified in terms of
agents' belief that expected returns are higher in bullish markets than in
bearish ones; b) a fundamental component proportional to the log earnings over
price ratio at time zero, from which the actual stock price may deviate as an
effect of random external disturbances, and c) a driving component ensuring the
diffusive behaviour of stock prices. Under these assumptions, we are able to
prove that, if we consider a sufficiently large number of periods, the expected
rate of return and the expected gross return are linear in the initial time
value of the log earnings over price ratio, and their variance goes to zero
with rate of convergence equal to minus one.