3,760 research outputs found
One Dimensional Continuum Falicov-Kimball Model in the Strongly Correlated Limit
In this paper we study the thermodynamics of the one dimensional continuum
analogue of the Falicov-Kimball model in the strongly correlated limit using a
method developed by Salsburg, Zwanzig and Kirkwood for the Takahashi gas. In
the ground state it is found that the electrons form a cluster. The effect
of including a Takahashi repulsion between particles is also studied where
it is found that as the repulsion is increased the ground state electron
configuration changes discontinuously from the clustered configuration to a
homogeneous or equal spaced configuration analogous to the checkerboard
configuration which arises in the lattice Falicov-Kimball model.Comment: 17 pages, Standard Latex File (UUencoded Postscript file of figures
available upon request. To appear in physica A) MELB-MATHS-PP-1096783, email:
[email protected]
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Does concealed handgun carry make campus safer? A panel data analysis of crime on college and university campuses
The purpose of this report is to recommend and test an empirical strategy for assessing the impact that concealed carry policies have on crime at college and university campuses. I use panel data obtained from the Department of Education for all crimes reported on four-year, undergraduate, federal financial aid-receiving institutions between 2001 and 2014 to model the impact of campus carry legislation. Differences in legislation across states, time, and school types allow for estimation of a triple difference regression model. Results of OLS estimations show that campus carry has no significant observable association with rates of aggravated assault, sexual assault, robbery, burglary, and motor theft committed on campus at the 95% confidence interval. These results are robust to a number of different assumptions, including time lag and negative binomial modeling approaches. However, true effects may be difficult to determine precisely as model estimations present large standard errors. Notably, my analysis does not attempt to control for variables that may also influence campus crime rates, such as local economic conditions, gun ownership rates, or rates of concealed carrying on campus. This analysis is therefore only a starting point for further research and the results contained here should be considered preliminary. At most, my analysis may throw partisan narratives surrounding campus carry into some measure of doubt. In particular, results fail to demonstrate a measurable deterrent effect theorized by campus carry advocates, or a criminal enabling effect theorized by opponents of the policy. Regardless of crime changes, I suggest that policymakers considering this controversial measure should also weigh how concealed carrying policies may influence a variety of other variables, including student suicides – a full understanding of which requires considerable caution and further research.Public Polic
Analytic Methods for Optimizing Realtime Crowdsourcing
Realtime crowdsourcing research has demonstrated that it is possible to
recruit paid crowds within seconds by managing a small, fast-reacting worker
pool. Realtime crowds enable crowd-powered systems that respond at interactive
speeds: for example, cameras, robots and instant opinion polls. So far, these
techniques have mainly been proof-of-concept prototypes: research has not yet
attempted to understand how they might work at large scale or optimize their
cost/performance trade-offs. In this paper, we use queueing theory to analyze
the retainer model for realtime crowdsourcing, in particular its expected wait
time and cost to requesters. We provide an algorithm that allows requesters to
minimize their cost subject to performance requirements. We then propose and
analyze three techniques to improve performance: push notifications, shared
retainer pools, and precruitment, which involves recalling retainer workers
before a task actually arrives. An experimental validation finds that
precruited workers begin a task 500 milliseconds after it is posted, delivering
results below the one-second cognitive threshold for an end-user to stay in
flow.Comment: Presented at Collective Intelligence conference, 201
Hotels-50K: A Global Hotel Recognition Dataset
Recognizing a hotel from an image of a hotel room is important for human
trafficking investigations. Images directly link victims to places and can help
verify where victims have been trafficked, and where their traffickers might
move them or others in the future. Recognizing the hotel from images is
challenging because of low image quality, uncommon camera perspectives, large
occlusions (often the victim), and the similarity of objects (e.g., furniture,
art, bedding) across different hotel rooms.
To support efforts towards this hotel recognition task, we have curated a
dataset of over 1 million annotated hotel room images from 50,000 hotels. These
images include professionally captured photographs from travel websites and
crowd-sourced images from a mobile application, which are more similar to the
types of images analyzed in real-world investigations. We present a baseline
approach based on a standard network architecture and a collection of
data-augmentation approaches tuned to this problem domain
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