194 research outputs found
Public Ownership of Banks and Economic Growth – The Role of Heterogeneity
In an influential paper, La Porta, Lopez-De-Silanes and Shleifer (2002) argued that public ownership of banks is associated with lower GDP growth. We show that this relationship does not hold for all countries, but depends on a country’s financial development and political institutions. Public ownership is harmful only if a country has low financial development and low institutional quality. The negative impact of public ownership on growth fades quickly as the financial and political system develops. In highly developed countries, we find no or even positive effects. Policy conclusions for individual countries are likely to be misleading if such heterogeneity is ignored.Public banks, economic growth, financial development, quality of governance, political institutions
Stable control of 10 dB two-mode squeezed vacuum states of light
Continuous variable entanglement is a fundamental resource for many quantum
information tasks. Important protocols like superactivation of zero-capacity
channels and finite-size quantum cryptography that provides security against
most general attacks, require about 10 dB two-mode squeezing. Additionally,
stable phase control mechanisms are necessary but are difficult to achieve
because the total amount of optical loss to the entangled beams needs to be
small. Here, we experimentally demonstrate a control scheme for two-mode
squeezed vacuum states at the telecommunication wavelength of 1550 nm. Our
states exhibited an Einstein-Podolsky-Rosen covariance product of 0.0309 \pm
0.0002, where 1 is the critical value, and a Duan inseparability value of 0.360
\pm 0.001, where 4 is the critical value. The latter corresponds to 10.45 \pm
0.01 dB which reflects the average non-classical noise suppression of the two
squeezed vacuum states used to generate the entanglement. With the results of
this work demanding quantum information protocols will become feasible.Comment: 8 pages, 4 figure
A graphical description of optical parametric generation of squeezed states of light
The standard process for the production of strongly squeezed states of light
is optical parametric amplification (OPA) below threshold in dielectric media
such as LiNbO3 or periodically poled KTP. Here, we present a graphical
description of squeezed light generation via OPA. It visualizes the interaction
between the nonlinear dielectric polarization of the medium and the
electromagnetic quantum field. We explicitly focus on the transfer from the
field's ground state to a squeezed vacuum state and from a coherent state to a
bright squeezed state by the medium's secondorder nonlinearity, respectively.
Our pictures visualize the phase dependent amplification and deamplification of
quantum uncertainties and give the phase relations between all propagating
electro-magnetic fields as well as the internally induced dielectric
polarizations. The graphical description can also be used to describe the
generation of nonclassical states of light via higherorder effects of the
non-linear dielectric polarization such as four-wave mixing and the optical
Kerr effect
Where Do We Go From Here? Guidelines For Offline Recommender Evaluation
Various studies in recent years have pointed out large issues in the offline
evaluation of recommender systems, making it difficult to assess whether true
progress has been made. However, there has been little research into what set
of practices should serve as a starting point during experimentation. In this
paper, we examine four larger issues in recommender system research regarding
uncertainty estimation, generalization, hyperparameter optimization and dataset
pre-processing in more detail to arrive at a set of guidelines. We present a
TrainRec, a lightweight and flexible toolkit for offline training and
evaluation of recommender systems that implements these guidelines. Different
from other frameworks, TrainRec is a toolkit that focuses on experimentation
alone, offering flexible modules that can be can be used together or in
isolation.
Finally, we demonstrate TrainRec's usefulness by evaluating a diverse set of
twelve baselines across ten datasets. Our results show that (i) many results on
smaller datasets are likely not statistically significant, (ii) there are at
least three baselines that perform well on most datasets and should be
considered in future experiments, and (iii) improved uncertainty quantification
(via nested CV and statistical testing) rules out some reported differences
between linear and neural methods. Given these results, we advocate that future
research should standardize evaluation using our suggested guidelines.Comment: 8 page
Strong Einstein-Podolsky-Rosen steering with unconditional entangled states
In 1935 Schr\"odinger introduced the terms entanglement and steering in the
context of the famous gedanken experiment discussed by Einstein, Podolsky, and
Rosen (EPR). Here, we report on a sixfold increase of the observed EPR-steering
effect as quantified by the Reid-criterion. We achieved an unprecedented low
conditional variance product of about 0.04 < 1, where 1 is the upper bound
below which steering is present. The steering effect was observed on an
unconditional two-mode-squeezed entangled state that contained a total vacuum
state contribution of less than 8%, including detection imperfections. Together
with the achieved high interference contrast between the entangled state and a
bright coherent laser field, our state is compatible with efficient
applications in high-power laser interferometers and fiber-based networks for
entanglement distribution.Comment: 5 pages, 3 figure
Effective Evaluation using Logged Bandit Feedback from Multiple Loggers
Accurately evaluating new policies (e.g. ad-placement models, ranking
functions, recommendation functions) is one of the key prerequisites for
improving interactive systems. While the conventional approach to evaluation
relies on online A/B tests, recent work has shown that counterfactual
estimators can provide an inexpensive and fast alternative, since they can be
applied offline using log data that was collected from a different policy
fielded in the past. In this paper, we address the question of how to estimate
the performance of a new target policy when we have log data from multiple
historic policies. This question is of great relevance in practice, since
policies get updated frequently in most online systems. We show that naively
combining data from multiple logging policies can be highly suboptimal. In
particular, we find that the standard Inverse Propensity Score (IPS) estimator
suffers especially when logging and target policies diverge -- to a point where
throwing away data improves the variance of the estimator. We therefore propose
two alternative estimators which we characterize theoretically and compare
experimentally. We find that the new estimators can provide substantially
improved estimation accuracy.Comment: KDD 201
- …