17,568 research outputs found
The flat limit of three dimensional asymptotically anti-de Sitter spacetimes
In order to get a better understanding of holographic properties of
gravitational theories with a vanishing cosmological constant, we analyze in
detail the relation between asymptotically anti-de Sitter and asymptotically
flat spacetimes in three dimensions. This relation is somewhat subtle because
the limit of vanishing cosmological constant cannot be naively taken in
standard Fefferman-Graham coordinates. After reformulating the standard anti-de
Sitter results in Robinson-Trautman coordinates, a suitably modified Penrose
limit is shown to connect both asymptotic regimes.Comment: 11 pages revtex fil
Isolated factorizations and their applications in simplicial affine semigroups
We introduce the concept of isolated factorizations of an element of a
commutative monoid and study its properties. We give several bounds for the
number of isolated factorizations of simplicial affine semigroups and numerical
semigroups. We also generalize -rectangular numerical semigroups to the
context of simplicial affine semigroups and study their isolated
factorizations. As a consequence of our results, we characterize those complete
intersection simplicial affine semigroups with only one Betti minimal element
in several ways. Moreover, we define Betti sorted and Betti divisible
simplicial affine semigroups and characterize them in terms of gluings and
their minimal presentations. Finally, we determine all the Betti divisible
numerical semigroups, which turn out to be those numerical semigroups that are
free for any arrangement of their minimal generators
Quid pro Quo: National Institutions and Sudden Stops in International Capital Movements
The paper explores the incidence of sudden stops in capital flows on the incentives for building national institutions that secure property rights in a world where sovereign defaults are possible equilibrium outcomes. Also thepaper builds upon the benchmark model of sovereign default and direct creditor sanctions by Obstfeld and Rogoff (1996). In their model it is in the debtor countryâs interest to âtie its handsâ and secure the property rights of lenders as much as possible because this enhances the credibility of the countryâs romise to repay and prevents default altogether. It incorporate two key features of todayâs international financial markets that are absent from the benchmark model: the possibility that lenders can trigger sudden stops in capital movements, and debt contracts in which lenders transfer resources to the country at the start of the period, which have to be repaid later. The papershows that under these conditions the advice âbuild institutions to secure repayment at all costsâ may be very bad advice indeed.
Sparse Linear Models applied to Power Quality Disturbance Classification
Power quality (PQ) analysis describes the non-pure electric signals that are
usually present in electric power systems. The automatic recognition of PQ
disturbances can be seen as a pattern recognition problem, in which different
types of waveform distortion are differentiated based on their features.
Similar to other quasi-stationary signals, PQ disturbances can be decomposed
into time-frequency dependent components by using time-frequency or time-scale
transforms, also known as dictionaries. These dictionaries are used in the
feature extraction step in pattern recognition systems. Short-time Fourier,
Wavelets and Stockwell transforms are some of the most common dictionaries used
in the PQ community, aiming to achieve a better signal representation. To the
best of our knowledge, previous works about PQ disturbance classification have
been restricted to the use of one among several available dictionaries. Taking
advantage of the theory behind sparse linear models (SLM), we introduce a
sparse method for PQ representation, starting from overcomplete dictionaries.
In particular, we apply Group Lasso. We employ different types of
time-frequency (or time-scale) dictionaries to characterize the PQ
disturbances, and evaluate their performance under different pattern
recognition algorithms. We show that the SLM reduce the PQ classification
complexity promoting sparse basis selection, and improving the classification
accuracy
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