21,202 research outputs found
Quantitative Analysis of the Effective Functional Structure in Yeast Glycolysis
Yeast glycolysis is considered the prototype of dissipative biochemical
oscillators. In cellular conditions, under sinusoidal source of glucose, the
activity of glycolytic enzymes can display either periodic, quasiperiodic or
chaotic behavior.
In order to quantify the functional connectivity for the glycolytic enzymes
in dissipative conditions we have analyzed different catalytic patterns using
the non-linear statistical tool of Transfer Entropy. The data were obtained by
means of a yeast glycolytic model formed by three delay differential equations
where the enzymatic speed functions of the irreversible stages have been
explicitly considered. These enzymatic activity functions were previously
modeled and tested experimentally by other different groups. In agreement with
experimental conditions, the studied time series corresponded to a
quasi-periodic route to chaos. The results of the analysis are three-fold:
first, in addition to the classical topological structure characterized by the
specific location of enzymes, substrates, products and feedback regulatory
metabolites, an effective functional structure emerges in the modeled
glycolytic system, which is dynamical and characterized by notable variations
of the functional interactions. Second, the dynamical structure exhibits a
metabolic invariant which constrains the functional attributes of the enzymes.
Finally, in accordance with the classical biochemical studies, our numerical
analysis reveals in a quantitative manner that the enzyme phosphofructokinase
is the key-core of the metabolic system, behaving for all conditions as the
main source of the effective causal flows in yeast glycolysis.Comment: Biologically improve
On the minimum orbital intersection distance computation: a new effective method
The computation of the Minimum Orbital Intersection Distance (MOID) is an
old, but increasingly relevant problem. Fast and precise methods for MOID
computation are needed to select potentially hazardous asteroids from a large
catalogue. The same applies to debris with respect to spacecraft. An iterative
method that strictly meets these two premises is presented.Comment: 13 pages, 10 figures, article accepted for publication in MNRA
Synergy and redundancy in the Granger causal analysis of dynamical networks
We analyze by means of Granger causality the effect of synergy and redundancy
in the inference (from time series data) of the information flow between
subsystems of a complex network. Whilst we show that fully conditioned Granger
causality is not affected by synergy, the pairwise analysis fails to put in
evidence synergetic effects.
In cases when the number of samples is low, thus making the fully conditioned
approach unfeasible, we show that partially conditioned Granger causality is an
effective approach if the set of conditioning variables is properly chosen. We
consider here two different strategies (based either on informational content
for the candidate driver or on selecting the variables with highest pairwise
influences) for partially conditioned Granger causality and show that depending
on the data structure either one or the other might be valid. On the other
hand, we observe that fully conditioned approaches do not work well in presence
of redundancy, thus suggesting the strategy of separating the pairwise links in
two subsets: those corresponding to indirect connections of the fully
conditioned Granger causality (which should thus be excluded) and links that
can be ascribed to redundancy effects and, together with the results from the
fully connected approach, provide a better description of the causality pattern
in presence of redundancy. We finally apply these methods to two different real
datasets. First, analyzing electrophysiological data from an epileptic brain,
we show that synergetic effects are dominant just before seizure occurrences.
Second, our analysis applied to gene expression time series from HeLa culture
shows that the underlying regulatory networks are characterized by both
redundancy and synergy
Algebras and non-geometric flux vacua
In this work we classify the subalgebras satisfied by non-geometric Q-fluxes
in type IIB orientifolds on T^6/(Z_2 x Z_2) with three moduli (S,T,U). We find
that there are five subalgebras compatible with the symmetries, each one
leading to a characteristic flux-induced superpotential. Working in the
4-dimensional effective supergravity we obtain families of supersymmetric AdS_4
vacua with all moduli stabilized at small string coupling g_s. Our results are
mostly analytic thanks to a judicious parametrization of the non-geometric, RR
and NSNS fluxes. We are also able to leave the flux-induced C_4 and C_8 RR
tadpoles as free variables, thereby enabling us to study which values are
allowed for each Q-subalgebra. Another novel outcome is the appearance of
multiple vacua for special sets of fluxes. However, they generically have g_s >
1 unless the net number of O3/D3 or O7/D7 sources needed to cancel the tadpoles
is large. We also discuss briefly the issues of axionic shift symmetries and
cancellation of Freed-Witten anomalies.Comment: 61 pages, LaTex, v2: added reference
Dynamic binary outcome models with maximal heterogeneity
Most econometric schemes to allow for heterogeneity in micro behaviour have two drawbacks: they do not fit the data and they rule out interesting economic models. In this paper we consider the time homogeneous first order Markov (HFOM) model that allows for maximal heterogeneity. That is, the modelling of the heterogeneity does not impose anything on the data (except the HFOM assumption for each agent) and it allows for any theory model (that gives a HFOM process for an individual observable variable). `Maximal' means that the joint distribution of initial values and the transition probabilities is unrestricted. We establish necessary and sufficient conditions for the point identification of our heterogeneity structure and show how it depends on the length of the panel. A feasible ML estimation procedure is developed. Tests for a variety of subsidiary hypotheses such as the assumption that marginal dynamic effects are homogeneous are developed. We apply our techniques to a long panel of Danish workers who are very homogeneous in terms of observables. We show that individual unemployment dynamics are very heterogeneous, even for such a homogeneous group. We also show that the impact of cyclical variables on individual unemployment probabilities differs widely across workers. Some workers have unemployment dynamics that are independent of the cycle whereas others are highly sensitive to macro shocks.Discrete choice, Markov processes, Nonparametric identification, Unemployment dynamics
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