36,331 research outputs found
On Volume Growth of Gradient Steady Ricci Solitons
In this paper we study volume growth of gradient steady Ricci solitons. We
show that if the potential function satisfies a uniform condition, then the
soliton has at most Euclidean volume growth.Comment: 8 page
What Are the Best Practices to Promote High-Ranking Female Employees Within Organizations?
Companies still have a long way to go to ensure gender diversity especially in leadership positions. Recent research indicated that although entry-level men and women are hired at an increasingly equal rate, women often times reach a mid-career “the glass ceiling”. Our research investigated the best practices and drew insights on how to tackle the gender diversity challenge
Dynamic Learning of Sequential Choice Bandit Problem under Marketing Fatigue
Motivated by the observation that overexposure to unwanted marketing
activities leads to customer dissatisfaction, we consider a setting where a
platform offers a sequence of messages to its users and is penalized when users
abandon the platform due to marketing fatigue. We propose a novel sequential
choice model to capture multiple interactions taking place between the platform
and its user: Upon receiving a message, a user decides on one of the three
actions: accept the message, skip and receive the next message, or abandon the
platform. Based on user feedback, the platform dynamically learns users'
abandonment distribution and their valuations of messages to determine the
length of the sequence and the order of the messages, while maximizing the
cumulative payoff over a horizon of length T. We refer to this online learning
task as the sequential choice bandit problem. For the offline combinatorial
optimization problem, we show that an efficient polynomial-time algorithm
exists. For the online problem, we propose an algorithm that balances
exploration and exploitation, and characterize its regret bound. Lastly, we
demonstrate how to extend the model with user contexts to incorporate
personalization
Determining the luminosity function of Swift long gamma-ray bursts with pseudo-redshifts
The determination of luminosity function (LF) of gamma-ray bursts (GRBs) is
of an important role for the cosmological applications of the GRBs, which is
however hindered seriously by some selection effects due to redshift
measurements. In order to avoid these selection effects, we suggest to
calculate pseudo-redshifts for Swift GRBs according to the empirical L-E_p
relationship. Here, such a relationship is determined by reconciling
the distributions of pseudo- and real redshifts of redshift-known GRBs. The
values of E_p taken from Butler's GRB catalog are estimated with Bayesian
statistics rather than observed. Using the GRB sample with pseudo-redshifts of
a relatively large number, we fit the redshift-resolved luminosity
distributions of the GRBs with a broken-power-law LF. The fitting results
suggest that the LF could evolve with redshift by a redshift-dependent break
luminosity, e.g., L_b=1.2\times10^{51}(1+z)^2\rm erg s^{-1}. The low- and
high-luminosity indices are constrained to 0.8 and 2.0, respectively. It is
found that the proportional coefficient between GRB event rate and star
formation rate should correspondingly decrease with increasing redshifts.Comment: 5 pages, 5 figures, accepted for publication in ApJ
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