22 research outputs found
World Financial 2014-2016 Market Bubbles: Oil Negative - US Dollar Positive
Based on the Log-Periodic Power Law (LPPL) methodology, with the universal
preferred scaling factor , the negative bubble on the oil
market in 2014-2016 has been detected. Over the same period a positive bubble
on the so called commodity currencies expressed in terms of the US dollar
appears to take place with the oscillation pattern which largely is mirror
reflected relative to oil price oscillation pattern. This documents recent
strong anti-correlation between the dynamics of the oil price and of the USD. A
related forecast made at the time of FENS 2015 conference (beginning of
November) turned out to be quite satisfactory. These findings provide also
further indication that such a log-periodically accelerating down-trend signals
termination of the corresponding decreases.Comment: presented at FENS2015 conference, to appear in Acta Physica Polonica
A. arXiv admin note: text overlap with arXiv:1003.5926 by other author
Multifractal cross-correlations of bitcoin and ether trading characteristics in the post-COVID-19 time
Unlike price fluctuations, the temporal structure of cryptocurrency trading
has seldom been a subject of systematic study. In order to fill this gap, we
analyse detrended correlations of the price returns, the average number of
trades in time unit, and the traded volume based on high-frequency data
representing two major cryptocurrencies: bitcoin and ether. We apply the
multifractal detrended cross-correlation analysis, which is considered the most
reliable method for identifying nonlinear correlations in time series. We find
that all the quantities considered in our study show an unambiguous
multifractal structure from both the univariate (auto-correlation) and
bivariate (cross-correlation) perspectives. We looked at the bitcoin--ether
cross-correlations in simultaneously recorded signals, as well as in
time-lagged signals, in which a time series for one of the cryptocurrencies is
shifted with respect to the other. Such a shift suppresses the
cross-correlations partially for short time scales, but does not remove them
completely. We did not observe any qualitative asymmetry in the results for the
two choices of a leading asset. The cross-correlations for the simultaneous and
lagged time series became the same in magnitude for the sufficiently long
scales
Decomposing cryptocurrency dynamics into recurring and noisy components
This paper investigates the temporal patterns of activity in the
cryptocurrency market with a focus on bitcoin, ether, dogecoin, and winklink
from January 2020 to December 2022. Market activity measures - logarithmic
returns, volume, and transaction number, sampled every 10 seconds, were divided
into intraday and intraweek periods and then further decomposed into recurring
and noise components via correlation matrix formalism. The key findings include
the distinctive market behavior from traditional stock markets due to the
nonexistence of trade opening and closing. This was manifest in three
enhanced-activity phases aligning with Asian, European, and US trading
sessions. An intriguing pattern of activity surge in 15-minute intervals,
particularly at full hours, was also noticed, implying the potential role of
algorithmic trading. Most notably, recurring bursts of activity in bitcoin and
ether were identified to coincide with the release times of significant US
macroeconomic reports such as Nonfarm payrolls, Consumer Price Index data, and
Federal Reserve statements. The most correlated daily patterns of activity
occurred in 2022, possibly reflecting the documented correlations with US stock
indices in the same period. Factors that are external to the inner market
dynamics are found to be responsible for the repeatable components of the
market dynamics, while the internal factors appear to be substantially random,
which manifests itself in a good agreement between the empirical eigenvalue
distributions in their bulk and the random matrix theory predictions expressed
by the Marchenko-Pastur distribution. The findings reported support the growing
integration of cryptocurrencies into the global financial markets
Characteristics of price related fluctuations in Non-Fungible Token (NFT) market
A non-fungible token (NFT) market is a new trading invention based on the
blockchain technology which parallels the cryptocurrency market. In the present
work we study capitalization, floor price, the number of transactions, the
inter-transaction times, and the transaction volume value of a few selected
popular token collections. The results show that the fluctuations of all these
quantities are characterized by heavy-tailed probability distribution
functions, in most cases well described by the stretched exponentials, with a
trace of power-law scaling at times, long-range memory, and in several cases
even the fractal organization of fluctuations, mostly restricted to the larger
fluctuations, however. We conclude that the NFT market - even though young and
governed by a somewhat different mechanisms of trading - shares several
statistical properties with the regular financial markets. However, some
differences are visible in the specific quantitative indicators
Analysis of fMRI time series : neutrosophic-entropy based clustering algorithm
Analysis of Functional Magnetic Resonance imaging (fMRI) time series plays a vital role in identifying the activation behaviour of neurons in the human brain. However, due to the complexity of the fMRI data, its analysis is challenging. Some studies show that the clustering methods can be beneficial in this respect. We apply a Neutrosophic Set-Based Clustering Algorithm (NEBCA) to fMRI time series datasets by this motivation. For the experimental purpose, we consider fMRI time series related to working memory tasks and resting-state. The clusters with different densities for the two analyzed cases are determined and compared. The identified differences indicate brain regions involved with the processing of the short-memory tasks. The corresponding brain areas are denoted according to Automated Anatomical Labeling (AAL) atlas. The statistical reliability of the findings is verified through various statistical tests. The presented results demonstrate the utility of the neutrosophic set based algorithm in brain neural data analysis
Complexity in economic and social systems: cryptocurrency market at around COVID-19
Social systems are characterized by an enormous network of connections and
factors that can influence the structure and dynamics of these systems. All
financial markets, including the cryptocurrency market, belong to the
economical sphere of human activity that seems to be the most interrelated and
complex. The cryptocurrency market complexity can be studied from different
perspectives. First, the dynamics of the cryptocurrency exchange rates to other
cryptocurrencies and fiat currencies can be studied and quantified by means of
multifractal formalism. Second, coupling and decoupling of the cryptocurrencies
and the conventional assets can be investigated with the advanced
cross-correlation analyses based on fractal analysis. Third, an internal
structure of the cryptocurrency market can also be a subject of analysis that
exploits, for example, a network representation of the market. We approach this
subject from all three perspectives based on data recorded between January 2019
and June 2020. This period includes the Covid-19 pandemic and we pay particular
attention to this event and investigate how strong its impact on the structure
and dynamics of the market was. Besides, the studied data covers a few other
significant events like double bull and bear phases in 2019. We show that,
throughout the considered interval, the exchange rate returns were multifractal
with intermittent signatures of bifractality that can be associated with the
most volatile periods of the market dynamics like a bull market onset in April
2019 and the Covid-19 outburst in March 2020. The topology of a minimal
spanning tree representation of the market also used to alter during these
events from a distributed type without any dominant node to a highly
centralized type with a dominating hub of USDT. However, the MST topology
during the pandemic differs in some details from other volatile periods