نتایج جستجو برای: مدل مکسنت maxent

تعداد نتایج: 121331  

2005
Yasser Hifny Steve Renals Neil D. Lawrence

The aim of this work is to develop a practical framework, which extends the classical Hidden Markov Models (HMM) for continuous speech recognition based on the Maximum Entropy (MaxEnt) principle. The MaxEnt models can estimate the posterior probabilities directly as with Hybrid NN/HMM connectionist speech recognition systems. In particular, a new acoustic modelling based on discriminative MaxEn...

2014
Gabriele Kern-Isberner Marco Wilhelm Christoph Beierle

Probabilistic reasoning under the so-called principle of maximum entropy is a viable and convenient alternative to Bayesian networks, relieving the user from providing complete (local) probabilistic information and observing rigorous conditional independence assumptions. In this paper, we present a novel approach to performing computational MaxEnt reasoning that makes use of symbolic computatio...

2006
Mihai Costache Marie Liénou Mihai Datcu

The analysis of discrimination, feature and model selection conduct to the discussion of the relationships between Support Vector Machine (SVM), Bayesian and Maximum Entropy (MaxEnt) formalisms. MaxEnt discrimination can be seen as a particular case of Bayesian inference, which at its turn can be seen as a regularization approach applicable to SVM. Probability measures can be attached to each f...

2005
Yasser Hifny Steve Renals

The aim of this work is to develop a practical framework, which extends the classical Hidden Markov Models (HMM) for continuous speech recognition based on the Maximum Entropy (MaxEnt) principle. The MaxEnt models can estimate the posterior probabilities directly as with Hybrid NN/HMM connectionist speech recognition systems. In particular, a new acoustic modelling based on discriminative MaxEn...

Journal: :Entropy 2009
Roger A. Baldwin

Maximum entropy (Maxent) modeling has great potential for identifying distributions and habitat selection of wildlife given its reliance on only presence locations. Recent studies indicate Maxent is relatively insensitive to spatial errors associated with location data, requires few locations to construct useful models, and performs better than other presence-only modeling approaches. Further a...

2006
ALADDIN SHAMILOV

In the present study, we have defined, so-called, MaxEnt and MinxEnt functionals on the set of corresponding moment vector functions via the MaxEnt and MinxEnt optimization measures. By virtue of these functionals we have obtained two new distributions – MinMaxEnt and MaxMinxEnt distributions. The approach to obtain mentioned distributions can be formulated as a generalization of MaxEnt and Min...

2002
Joshua Goodman

Maximum Entropy (maxent) models are an attractive formalism for statistical models of many types and have been used for a number of purposes, including language modeling (Rosenfeld 1994), part of speech tagging (Ratnaparkhi 1996), prepositional phrase attachment (Ratnaparkhi 1998), sentence breaking (Reynar and Ratnaparkhi 1997) and parsing (Ratnaparkhi 1997). Maxent models allow the combinatio...

2007
Bert Huang Ansaf Salleb-Aouissi

We propose a natural generalization of Regularized Maximum Entropy Density Estimation (maxent) to handle input data with unknown values. While standard approaches to handling missing data usually involve estimating the actual unknown values, then using the estimated, complete data as input, our method avoids the two-step process and handles unknown values directly in the maximum entropy formula...

پایان نامه :وزارت علوم، تحقیقات و فناوری - دانشگاه صنعتی اصفهان - دانشکده منابع طبیعی 1393

زیستگاه یکی از پارامتر های کلیدی در جهت حفاظت از گونه ها به خصوص گونه های در معرض خطر انقراض می باشد. در این مطالعه مطلوبیت زیستگاه سنجاب ایرانی در مناطق حفاظت شده دنا، دنای شرقی، خامین و دیل با استفاده از روش تحلیل عاملی آشیان بوم شناختی و روش حداکثر آنتروپی (مکسنت) مورد ارزیابی قرار گرفت. متغیرهای زیست محیطی مورد استفاده در این تحقیق شامل شیب، ارتفاع، طبقات جهت، کاربری های منطقه، اقلیم، تیپ پ...

2017
Cody M. Rhoden William E. Peterman Christopher A. Taylor

BACKGROUND Rare or narrowly endemic organisms are difficult to monitor and conserve when their total distribution and habitat preferences are incompletely known. One method employed in determining distributions of these organisms is species distribution modeling (SDM). METHODS Using two species of narrowly endemic burrowing crayfish species as our study organisms, we sought to ground validate...

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