10,783 research outputs found
Maximum Entropy, Word-Frequency, Chinese Characters, and Multiple Meanings
The word-frequency distribution of a text written by an author is well
accounted for by a maximum entropy distribution, the RGF (random group
formation)-prediction. The RGF-distribution is completely determined by the a
priori values of the total number of words in the text (M), the number of
distinct words (N) and the number of repetitions of the most common word
(k_max). It is here shown that this maximum entropy prediction also describes a
text written in Chinese characters. In particular it is shown that although the
same Chinese text written in words and Chinese characters have quite
differently shaped distributions, they are nevertheless both well predicted by
their respective three a priori characteristic values. It is pointed out that
this is analogous to the change in the shape of the distribution when
translating a given text to another language. Another consequence of the
RGF-prediction is that taking a part of a long text will change the input
parameters (M, N, k_max) and consequently also the shape of the frequency
distribution. This is explicitly confirmed for texts written in Chinese
characters. Since the RGF-prediction has no system-specific information beyond
the three a priori values (M, N, k_max), any specific language characteristic
has to be sought in systematic deviations from the RGF-prediction and the
measured frequencies. One such systematic deviation is identified and, through
a statistical information theoretical argument and an extended RGF-model, it is
proposed that this deviation is caused by multiple meanings of Chinese
characters. The effect is stronger for Chinese characters than for Chinese
words. The relation between Zipf's law, the Simon-model for texts and the
present results are discussed.Comment: 15 pages, 10 figures, 2 table
Dynamics of higher-order rational solitons for the nonlocal nonlinear Schrodinger equation with the self-induced parity-time-symmetric potential
The integrable nonlocal nonlinear Schrodinger (NNLS) equation with the
self-induced parity-time-symmetric potential [Phys. Rev. Lett. 110 (2013)
064105] is investigated, which is an integrable extension of the standard NLS
equation. Its novel higher-order rational solitons are found using the nonlocal
version of the generalized perturbation (1, N-1)-fold Darboux transformation.
These rational solitons illustrate abundant wave structures for the distinct
choices of parameters (e.g., the strong and weak interactions of bright and
dark rational solitons). Moreover, we also explore the dynamical behaviors of
these higher-order rational solitons with some small noises on the basis of
numerical simulations.Comment: 9 pages, 8 figure
Evolutionary of Online Social Networks Driven by Pareto Wealth Distribution and Bidirectional Preferential Attachment
Understanding of evolutionary mechanism of online social networks is greatly
significant for the development of network science. However, present researches
on evolutionary mechanism of online social networks are neither deep nor clear
enough. In this study, we empirically showed the essential evolution
characteristics of Renren online social network. From the perspective of Pareto
wealth distribution and bidirectional preferential attachment, the origin of
online social network evolution is analyzed and the evolution mechanism of
online social networks is explained. Then a novel model is proposed to
reproduce the essential evolution characteristics which are consistent with the
ones of Renren online social network, and the evolutionary analytical solution
to the model is presented. The model can also well predict the ordinary
power-law degree distribution. In addition, the universal bowing phenomenon of
the degree distribution in many online social networks is explained and
predicted by the model. The results suggest that Pareto wealth distribution and
bidirectional preferential attachment can play an important role in the
evolution process of online social networks and can help us to understand the
evolutionary origin of online social networks. The model has significant
implications for dynamic simulation researches of social networks, especially
in information diffusion through online communities and infection spreading in
real societies.Comment: 19 pages, 8 figures,31 reference
Universal Predictability of Mobility Patterns in Cities
Despite the long history of modelling human mobility, we continue to lack a
highly accurate approach with low data requirements for predicting mobility
patterns in cities. Here, we present a population-weighted opportunities model
without any adjustable parameters to capture the underlying driving force
accounting for human mobility patterns at the city scale. We use various
mobility data collected from a number of cities with different characteristics
to demonstrate the predictive power of our model. We find that insofar as the
spatial distribution of population is available, our model offers universal
prediction of mobility patterns in good agreement with real observations,
including distance distribution, destination travel constraints and flux. In
contrast, the models that succeed in modelling mobility patterns in countries
are not applicable in cities, which suggests that there is a diversity of human
mobility at different spatial scales. Our model has potential applications in
many fields relevant to mobility behaviour in cities, without relying on
previous mobility measurements.Comment: 18 pages, 21 figures, 3 table
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