796 research outputs found
The role of volume in order book dynamics: a multivariate Hawkes process analysis
We show that multivariate Hawkes processes coupled with the nonparametric
estimation procedure first proposed in Bacry and Muzy (2015) can be
successfully used to study complex interactions between the time of arrival of
orders and their size, observed in a limit order book market. We apply this
methodology to high-frequency order book data of futures traded at EUREX.
Specifically, we demonstrate how this approach is amenable not only to analyze
interplay between different order types (market orders, limit orders,
cancellations) but also to include other relevant quantities, such as the order
size, into the analysis, showing also that simple models assuming the
independence between volume and time are not suitable to describe the data
Modelling fluctuations of financial time series: from cascade process to stochastic volatility model
In this paper, we provide a simple, ``generic'' interpretation of
multifractal scaling laws and multiplicative cascade process paradigms in terms
of volatility correlations. We show that in this context 1/f power spectra, as
observed recently by Bonanno et al., naturally emerge. We then propose a simple
solvable ``stochastic volatility'' model for return fluctuations. This model is
able to reproduce most of recent empirical findings concerning financial time
series: no correlation between price variations, long-range volatility
correlations and multifractal statistics. Moreover, its extension to a
multivariate context, in order to model portfolio behavior, is very natural.
Comparisons to real data and other models proposed elsewhere are provided.Comment: 21 pages, 5 figure
A multivariate multifractal model for return fluctuations
In this paper we briefly review the recently inrtroduced Multifractal Random
Walk (MRW) that is able to reproduce most of recent empirical findings
concerning financial time-series : no correlation between price variations,
long-range volatility correlations and multifractal statistics. We then focus
on its extension to a multivariate context in order to model portfolio
behavior. Empirical estimations on real data suggest that this approach can be
pertinent to account for the nature of both linear and non-linear correlation
between stock returns at all time scales.Comment: To be published in the Proceeding of the APFA2 conference (Liege,
Belgium, July 2000) in the journal Quantitative Financ
Linear processes in high-dimension: phase space and critical properties
In this work we investigate the generic properties of a stochastic linear
model in the regime of high-dimensionality. We consider in particular the
Vector AutoRegressive model (VAR) and the multivariate Hawkes process. We
analyze both deterministic and random versions of these models, showing the
existence of a stable and an unstable phase. We find that along the transition
region separating the two regimes, the correlations of the process decay
slowly, and we characterize the conditions under which these slow correlations
are expected to become power-laws. We check our findings with numerical
simulations showing remarkable agreement with our predictions. We finally argue
that real systems with a strong degree of self-interaction are naturally
characterized by this type of slow relaxation of the correlations.Comment: 40 pages, 5 figure
Nonparametric Markovian Learning of Triggering Kernels for Mutually Exciting and Mutually Inhibiting Multivariate Hawkes Processes
In this paper, we address the problem of fitting multivariate Hawkes
processes to potentially large-scale data in a setting where series of events
are not only mutually-exciting but can also exhibit inhibitive patterns. We
focus on nonparametric learning and propose a novel algorithm called MEMIP
(Markovian Estimation of Mutually Interacting Processes) that makes use of
polynomial approximation theory and self-concordant analysis in order to learn
both triggering kernels and base intensities of events. Moreover, considering
that N historical observations are available, the algorithm performs
log-likelihood maximization in operations, while the complexity of
non-Markovian methods is in . Numerical experiments on simulated
data, as well as real-world data, show that our method enjoys improved
prediction performance when compared to state-of-the art methods like MMEL and
exponential kernels
The nature of price returns during periods of high market activity
By studying all the trades and best bids/asks of ultra high frequency
snapshots recorded from the order books of a basket of 10 futures assets, we
bring qualitative empirical evidence that the impact of a single trade depends
on the intertrade time lags. We find that when the trading rate becomes faster,
the return variance per trade or the impact, as measured by the price variation
in the direction of the trade, strongly increases. We provide evidence that
these properties persist at coarser time scales. We also show that the spread
value is an increasing function of the activity. This suggests that order books
are more likely empty when the trading rate is high.Comment: 17 pages, 11 figure
Market impacts and the life cycle of investors orders
In this paper, we use a database of around 400,000 metaorders issued by
investors and electronically traded on European markets in 2010 in order to
study market impact at different scales.
At the intraday scale we confirm a square root temporary impact in the daily
participation, and we shed light on a duration factor in with
. Including this factor in the fits reinforces the square
root shape of impact. We observe a power-law for the transient impact with an
exponent between (for long metaorders) and (for shorter ones).
Moreover we show that the market does not anticipate the size of the
meta-orders. The intraday decay seems to exhibit two regimes (though hard to
identify precisely): a "slow" regime right after the execution of the
meta-order followed by a faster one. At the daily time scale, we show price
moves after a metaorder can be split between realizations of expected returns
that have triggered the investing decision and an idiosynchratic impact that
slowly decays to zero.
Moreover we propose a class of toy models based on Hawkes processes (the
Hawkes Impact Models, HIM) to illustrate our reasoning.
We show how the Impulsive-HIM model, despite its simplicity, embeds appealing
features like transience and decay of impact. The latter is parametrized by a
parameter having a macroscopic interpretation: the ratio of contrarian
reaction (i.e. impact decay) and of the "herding" reaction (i.e. impact
amplification).Comment: 30 pages, 12 figure
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