93,481 research outputs found
Support -Tilting Modules under Split-by-Nilpotent Extensions
Let be a split extension of a finite-dimensional algebra
by a nilpotent bimodule , and let be a pair in
with projective. We prove that is a support -tilting
pair in if and only if is a support -tilting pair
in and \Hom_\Lambda(T\otimes_\Lambda E,\tau
T_\Lambda)=0=\Hom_\Lambda(P,T\otimes_\Lambda E). As applications, we obtain a
necessary and sufficient condition such that is support -tilting pair for a
cluster-tilted algebra corresponding to a tilted algebra ;
and we also get that if such that and are support -tilting
-modules, then is a left mutation of
if and only if is a left mutation of
Achieving an Efficient and Fair Equilibrium Through Taxation
It is well known that a game equilibrium can be far from efficient or fair,
due to the misalignment between individual and social objectives. The focus of
this paper is to design a new mechanism framework that induces an efficient and
fair equilibrium in a general class of games. To achieve this goal, we propose
a taxation framework, which first imposes a tax on each player based on the
perceived payoff (income), and then redistributes the collected tax to other
players properly. By turning the tax rate, this framework spans the continuum
space between strategic interactions (of selfish players) and altruistic
interactions (of unselfish players), hence provides rich modeling
possibilities. The key challenge in the design of this framework is the proper
taxing rule (i.e., the tax exemption and tax rate) that induces the desired
equilibrium in a wide range of games. First, we propose a flat tax rate (i.e.,
a single tax rate for all players), which is necessary and sufficient for
achieving an efficient equilibrium in any static strategic game with common
knowledge. Then, we provide several tax exemption rules that achieve some
typical fairness criterions (such as the Max-min fairness) at the equilibrium.
We further illustrate the implementation of the framework in the game of
Prisoners' Dilemma.Comment: This manuscript serves as the technical report for the paper with the
same title published in APCC 201
Detecting Online Hate Speech Using Context Aware Models
In the wake of a polarizing election, the cyber world is laden with hate
speech. Context accompanying a hate speech text is useful for identifying hate
speech, which however has been largely overlooked in existing datasets and hate
speech detection models. In this paper, we provide an annotated corpus of hate
speech with context information well kept. Then we propose two types of hate
speech detection models that incorporate context information, a logistic
regression model with context features and a neural network model with learning
components for context. Our evaluation shows that both models outperform a
strong baseline by around 3% to 4% in F1 score and combining these two models
further improve the performance by another 7% in F1 score.Comment: Published in RANLP 201
On the generalized resolvent of linear pencils in Banach spaces
Utilizing the stability characterizations of generalized inverses of linear
operator, we investigate the existence of generalized resolvents of linear
pencils in Banach spaces. Some practical criterions for the existence of
generalized resolvents of the linear pencil
are provided and an explicit expression of the generalized resolvent is given.
As applications, the characterization for the Moore-Penrose inverse of the
linear pencil to be its generalized resolvent and the existence of the
generalized resolvents of linear pencils of finite rank operators, Fredholm
operators and semi-Fredholm operators are also considered. The results obtained
in this paper extend and improve many results in this area
Silting Modules over Triangular Matrix Rings
Let be rings and the triangular matrix ring with a
-bimodule. Let be a right -module and a
right -module. We prove that
is a silting right -module if and only if both and
are silting modules and is generated by .
Furthermore, we prove that if and are finite dimensional
algebras over an algebraically closed field and and
are finitely generated, then is a
support -tilting -module if and only if both and
are support -tilting modules, \Hom_\Lambda(Y\otimes_\Gamma
M,\tau X)=0 and \Hom_\Lambda(e\Lambda, Y\otimes_\Gamma M)=0 with the
maximal idempotent such that \Hom_\Lambda(e\Lambda, X)=0.Comment: 17 pages, accepted for publication in Taiwanese Journal of
Mathematic
Majorana zero modes in the hopping-modulated one-dimensional -wave superconducting model
We investigate the one-dimensional -wave superconducting model with
periodically modulated hopping and show that under time-reversal symmetry, the
number of the Majorana zero modes (MZMs) strongly depends on the modulation
period. If the modulation period is odd, there can be at most one MZM. However
if the period is even, the number of the MZMs can be zero, one and two. In
addition, the MZMs will disappear as the chemical potential varies. We derive
the condition for the existence of the MZMs and show that the topological
properties in this model are dramatically different from the one with
periodically modulated potential
Zeroth-Order Stochastic Alternating Direction Method of Multipliers for Nonconvex Nonsmooth Optimization
Alternating direction method of multipliers (ADMM) is a popular optimization
tool for the composite and constrained problems in machine learning. However,
in many machine learning problems such as black-box attacks and bandit
feedback, ADMM could fail because the explicit gradients of these problems are
difficult or infeasible to obtain. Zeroth-order (gradient-free) methods can
effectively solve these problems due to that the objective function values are
only required in the optimization. Recently, though there exist a few
zeroth-order ADMM methods, they build on the convexity of objective function.
Clearly, these existing zeroth-order methods are limited in many applications.
In the paper, thus, we propose a class of fast zeroth-order stochastic ADMM
methods (i.e., ZO-SVRG-ADMM and ZO-SAGA-ADMM) for solving nonconvex problems
with multiple nonsmooth penalties, based on the coordinate smoothing gradient
estimator. Moreover, we prove that both the ZO-SVRG-ADMM and ZO-SAGA-ADMM have
convergence rate of , where denotes the number of iterations. In
particular, our methods not only reach the best convergence rate for
the nonconvex optimization, but also are able to effectively solve many complex
machine learning problems with multiple regularized penalties and constraints.
Finally, we conduct the experiments of black-box binary classification and
structured adversarial attack on black-box deep neural network to validate the
efficiency of our algorithms.Comment: To Appear in IJCAI 2019. Supplementary materials are adde
Efficient Characteristic Set Algorithms for Equation Solving in Finite Fields and Applications in Cryptanalysis
Efficient characteristic set methods for computing solutions of polynomial
equation systems in a finite field are proposed. The concept of proper
triangular sets is introduced and an explicit formula for the number of
solutions of a proper and monic (or regular) triangular set is given. An
improved zero decomposition algorithm which can be used to reduce the zero set
of an equation system in general form to the union of zero sets of monic proper
triangular sets is proposed. As a consequence, we can give an explicit formula
for the number of solutions of an equation system. Bitsize complexity for the
algorithm is given in the case of Boolean polynomials. We also give a
multiplication free characteristic set method for Boolean polynomials, where
the sizes of the polynomials are effectively controlled. The algorithms are
implemented in the case of Boolean polynomials and extensive experiments show
that they are quite efficient for solving certain classes of Boolean equations
Entropic Effects of Thermal Rippling on van der Waals Interactions between Monolayer Graphene and a Rigid Substrate
Graphene monolayer, with extremely low flexural stiffness, displays
spontaneous rippling due to thermal fluctuations at a finite temperature. When
a graphene membrane is placed on a solid substrate, the adhesive interactions
between graphene and the substrate could considerably suppress thermal
rippling. On the other hand, the statistical nature of thermal rippling adds an
entropic contribution to the graphene-substrate interactions. In this paper we
present a statistical mechanics analysis on thermal rippling of monolayer
graphene supported on a rigid substrate, assuming a generic form of van der
Waals interactions between graphene and substrate at T = 0 K. The rippling
amplitude, the equilibrium average separation, and the average interaction
energy are predicted simultaneously and compared with molecular dynamics (MD)
simulations. While the amplitude of thermal rippling is reduced by adhesive
interactions, the entropic contribution leads to an effective repulsion. As a
result, the equilibrium average separation increases and the effective adhesion
energy decreases with increasing temperature. Moreover, the effect of a biaxial
pre-strain in graphene is considered, and a buckling instability is predicted
at a critical compressive strain that depends on both the temperature and the
adhesive interactions. Limited by the harmonic approximations, the theoretical
predictions agree with MD simulations only for relatively small rippling
amplitudes but can be extended to account for the anharmonic effects.Comment: 9 figures. Submitted for review on November 9, 201
Recognizing Explicit and Implicit Hate Speech Using a Weakly Supervised Two-path Bootstrapping Approach
In the wake of a polarizing election, social media is laden with hateful
content. To address various limitations of supervised hate speech
classification methods including corpus bias and huge cost of annotation, we
propose a weakly supervised two-path bootstrapping approach for an online hate
speech detection model leveraging large-scale unlabeled data. This system
significantly outperforms hate speech detection systems that are trained in a
supervised manner using manually annotated data. Applying this model on a large
quantity of tweets collected before, after, and on election day reveals
motivations and patterns of inflammatory language.Comment: Published in IJCNLP 201
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