2,157 research outputs found
Evidential-EM Algorithm Applied to Progressively Censored Observations
Evidential-EM (E2M) algorithm is an effective approach for computing maximum
likelihood estimations under finite mixture models, especially when there is
uncertain information about data. In this paper we present an extension of the
E2M method in a particular case of incom-plete data, where the loss of
information is due to both mixture models and censored observations. The prior
uncertain information is expressed by belief functions, while the
pseudo-likelihood function is derived based on imprecise observations and prior
knowledge. Then E2M method is evoked to maximize the generalized likelihood
function to obtain the optimal estimation of parameters. Numerical examples
show that the proposed method could effectively integrate the uncertain prior
infor-mation with the current imprecise knowledge conveyed by the observed
data
Second-Order Belief Hidden Markov Models
Hidden Markov Models (HMMs) are learning methods for pattern recognition. The
probabilistic HMMs have been one of the most used techniques based on the
Bayesian model. First-order probabilistic HMMs were adapted to the theory of
belief functions such that Bayesian probabilities were replaced with mass
functions. In this paper, we present a second-order Hidden Markov Model using
belief functions. Previous works in belief HMMs have been focused on the
first-order HMMs. We extend them to the second-order model
The United Kingdom 2017 election:polarisation in a split issue space
After decades in which party competition was fought in the centre ground, the 2017 UK General Election witnessed a return to more conflictual politics. This article assesses public support for the electoral strategies of the main parties and examines the extent to which the issues the parties campaigned on resonated with their own supporters, as well as with the wider public. Drawing on the issue-yield framework, the article shows that the Conservative campaign\u2013generally considered to be badly run\u2013did not focus on issues that would fully exploit the opportunities for expanding support that were open to the party. Labour, by contrast, played a much better hand. While taking a clear left-wing stance on many policies that were popular with its constituency, the party also skilfully emphasised valence issues that Labour is often seen as more credible on, such as healthcare and education
Model for l/f Flux Noise in SQUIDs and Qubits
We propose a model for 1/f flux noise in superconducting devices (f is
frequency). The noise is generated by the magnetic moments of electrons in
defect states which they occupy for a wide distribution of times before
escaping. A trapped electron occupies one of the two Kramers-degenerate ground
states, between which the transition rate is negligible at low temperature. As
a result, the magnetic moment orientation is locked. Simulations of the noise
produced by randomly oriented defects with a density of 5*10^17 m^-2 yield 1/f
noise magnitudes in good agreement with experiments.Comment: 16 pages, 4 figures; v2: Various minor changes. Physical Review
Letters, in pres
A Random Matrix Approach to VARMA Processes
We apply random matrix theory to derive spectral density of large sample
covariance matrices generated by multivariate VMA(q), VAR(q) and VARMA(q1,q2)
processes. In particular, we consider a limit where the number of random
variables N and the number of consecutive time measurements T are large but the
ratio N/T is fixed. In this regime the underlying random matrices are
asymptotically equivalent to Free Random Variables (FRV). We apply the FRV
calculus to calculate the eigenvalue density of the sample covariance for
several VARMA-type processes. We explicitly solve the VARMA(1,1) case and
demonstrate a perfect agreement between the analytical result and the spectra
obtained by Monte Carlo simulations. The proposed method is purely algebraic
and can be easily generalized to q1>1 and q2>1.Comment: 16 pages, 6 figures, submitted to New Journal of Physic
A unified view of some representations of imprecise probabilities
International audienceSeveral methods for the practical representation of imprecise probabilities exist such as Ferson's p-boxes, possibility distributions, Neumaier's clouds, and random sets . In this paper some relationships existing between the four kinds of representations are discussed. A cloud as well as a p-box can be modelled as a pair of possibility distributions. We show that a generalized form of p-box is a special kind of belief function and also a special kind of cloud
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