115 research outputs found
Complex network analysis and nonlinear dynamics
This chapter aims at reviewing complex network and nonlinear dynamical
models and methods that were either developed for or applied to socioeconomic
issues, and pertinent to the theme of New Economic Geography. After an introduction
to the foundations of the field of complex networks, the present summary
introduces some applications of complex networks to economics, finance, epidemic
spreading of innovations, and regional trade and developments. The chapter also
reviews results involving applications of complex networks to other relevant
socioeconomic issue
Complex-valued information entropy measure for networks with directed links (digraphs). Application to citations by community agents with opposite opinions
The notion of complex-valued information entropy measure is presented. It
applies in particular to directed networks (digraphs). The corresponding
statistical physics notions are outlined. The studied network, serving as a
case study, in view of illustrating the discussion, concerns citations by
agents belonging to two distinct communities which have markedly different
opinions: the Neocreationist and Intelligent Design Proponents, on one hand,
and the Darwinian Evolution Defenders, on the other hand. The whole, intra- and
inter-community adjacency matrices, resulting from quotations of published work
by the community agents, are elaborated and eigenvalues calculated. Since
eigenvalues can be complex numbers, the information entropy may become also
complex-valued. It is calculated for the illustrating case. The role of the
imaginary part finiteness is discussed in particular and given some physical
sense interpretation through local interaction range consideration. It is
concluded that such generalizations are not only interesting and necessary for
discussing directed networks, but also may give new insight into conceptual
ideas about directed or other networks. Notes on extending the above to Tsallis
entropy measure are found in an Appendix.Comment: 26 pages, 5 figures, 4 Tables, 72 refs.; submitted to EPJ
Effectiveness of Measures of Performance During Speculative Bubbles
Statistical analysis of financial data most focused on testing the validity
of Brownian motion (Bm). Analysis performed on several time series have shown
deviation from the Bm hypothesis, that is at the base of the evaluation of many
financial derivatives. We inquiry in the behavior of measures of performance
based on maximum drawdown movements (MDD), testing their stability when the
underlying process deviates from the Bm hypothesis. In particular we consider
the fractional Brownian motion (fBm), and fluctuations estimated empirically on
raw market data. The case study of the rising part of speculative bubbles is
reported
Long run analysis of crude oil portfolios
This paper deals with the analysis of the long-run behavior of a set of mispricing portfolios generated by three crude oils, where one of the oils is the reference commodity and it is compared to a combination of the other two ones. To this aim, the long-term parameter related to the mispricing portfolio are estimated on empirical data. We pay particular attention to the cases of mispricing portfolios either of stationary type or following a Brownian motion: the former situation is associated to replication portfolios of a reference commodity; the latter one allows to implement forecasts. The theoretical setting is validated through empirical data on WTI, Brent and Dubai oils
Complex networks analysis in socioeconomic models
This chapter aims at reviewing complex networks models and methods that were
either developed for or applied to socioeconomic issues, and pertinent to the
theme of New Economic Geography. After an introduction to the foundations of
the field of complex networks, the present summary adds insights on the
statistical mechanical approach, and on the most relevant computational aspects
for the treatment of these systems. As the most frequently used model for
interacting agent-based systems, a brief description of the statistical
mechanics of the classical Ising model on regular lattices, together with
recent extensions of the same model on small-world Watts-Strogatz and
scale-free Albert-Barabasi complex networks is included. Other sections of the
chapter are devoted to applications of complex networks to economics, finance,
spreading of innovations, and regional trade and developments. The chapter also
reviews results involving applications of complex networks to other relevant
socioeconomic issues, including results for opinion and citation networks.
Finally, some avenues for future research are introduced before summarizing the
main conclusions of the chapter.Comment: 39 pages, 185 references, (not final version of) a chapter prepared
for Complexity and Geographical Economics - Topics and Tools, P.
Commendatore, S.S. Kayam and I. Kubin Eds. (Springer, to be published
Tremor price dynamics in the world's network of stock exchanges
We use insight from a model of earth tectonic plate movement to obtain a new
understanding of the build up and release of stress in the price dynamics of
the worlds stock exchanges. Nonlinearity enters the model due to a behavioral
attribute of humans reacting disproportionately to big changes. This nonlinear
response allows us to classify price movements of a given stock index as either
being generated due to specific economic news for the country in question, or
by the ensemble of the worlds stock exchanges reacting together like a complex
system. Similar in structure to the Capital Asset Pricing Model in Finance, the
model predicts how an individual stock exchange should be priced in terms of
the performance of the global market of exchanges, but with human behavioral
characteristics included in the pricing. A number of the models assumptions are
validated against empirical data for 24 of the worlds leading stock exchanges.
We show how treshold effects can lead to synchronization in the global network
of stock exchanges
On the maximum drawdown during speculative bubbles
A taxonomy of large financial crashes proposed in the literature locates the
burst of speculative bubbles due to endogenous causes in the framework of
extreme stock market crashes, defined as falls of market prices that are
outlier with respect to the bulk of drawdown price movement distribution. This
paper goes on deeper in the analysis providing a further characterization of
the rising part of such selected bubbles through the examination of drawdown
and maximum drawdown movement of indices prices. The analysis of drawdown
duration is also performed and it is the core of the risk measure estimated
here.Comment: 15 pages, 7 figure
Contagion in the world's stock exchanges seen as a set of coupled oscillators
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/cesdp2015.htmlDocuments de travail du Centre d'Economie de la Sorbonne 2015.78 - ISSN: 1955-611XWe study how the phenomenon of contagion can take place in the network of the world's stock exchanges when each stock exchange acts as an integrate-and-fire oscillator. The characteristic non-linear price behavior of the integrate-and-fire oscillators is supported by empirical data and has a behavioral origin. One advantage of the integrate-and-fire dynamics is that it enables for a direct identification of cause and effect of price movements, without the need for statistical statistical tests such as for example Granger causality tests often used in the identification of causes of contagion. Our methodology can thereby identify the most relevant nodes with respect to onset of contagion in the network of stock exchanges, as well as identify potential periods of high vulnerability of the network. The model is characterized by a separation of time scales created by a slow build up of stresses, for example due to (say monthly/yearly) macroeconomic factors and then a fast (say hourly/daily) release of stresses through “price-quakes” of price movements across the worlds network of stock exchanges
Promoting sustainability goals: innovation trajectories of Fintech through patent analysis
Patents are important sources of technical knowledge because they offer a wealth of information on innovations and technological developments. This paper focuses on Fintech-related patent certificates in order to examine the technical trends in this particular sector and dis- cuss the factors influencing technological advancement. The data were retrieved through the World Intellectual Property Organization database, considering selected keywords. Through the network analysis, we identify five relevant technological clusters that allow us to detect the technological substrate underlying the corresponding cluster. The Bass diffusion model permits the observation of the technological trajectories of each cluster, outlining the diffusion patterns. Furthermore, particular attention is given to the developing technologies defined as "green", and we describe how these trends have changed over time and predict their future technological trajectory. Our findings provide an in-depth analysis of the Fin- tech patent landscape, highlighting the connections between the different technologies. It also allows us to assess the technological leadership of companies and the technological life cycle that describes the diffusion patterns
“Price-Quakes” Shaking the World's Stock Exchanges
Background: Systemic risk has received much more awareness after the excessive risk taking by major financial instituations
pushed the world’s financial system into what many considered a state of near systemic failure in 2008. The IMF for example
in its yearly 2009 Global Financial Stability Report acknowledged the lack of proper tools and research on the topic.
Understanding how disruptions can propagate across financial markets is therefore of utmost importance.
Methodology/Principal Findings: Here, we use empirical data to show that the world’s markets have a non-linear threshold
response to events, consistent with the hypothesis that traders exhibit change blindness. Change blindness is the tendency
of humans to ignore small changes and to react disproportionately to large events. As we show, this may be responsible for
generating cascading events—pricequakes—in the world’s markets. We propose a network model of the world’s stock
exchanges that predicts how an individual stock exchange should be priced in terms of the performance of the global
market of exchanges, but with change blindness included in the pricing. The model has a direct correspondence to models
of earth tectonic plate movements developed in physics to describe the slip-stick movement of blocks linked via spring
forces.
Conclusions/Significance: We have shown how the price dynamics of the world’s stock exchanges follows a dynamics of
build-up and release of stress, similar to earthquakes. The nonlinear response allows us to classify price movements of a
given stock index as either being generated internally, due to specific economic news for the country in question, or
externally, by the ensemble of the world’s stock exchanges reacting together like a complex system. The model may provide
new insight into the origins and thereby also prevent systemic risks in the global financial network
- …
