When constructing discrete (binned) distributions from samples of a data set, applications exist where it is desirable to assure that all bins of the sample distribution have nonzero probability. For example, if the sample distribution is part of a predictive model for which we require returning a response for the entire codomain, or if we use Kullback–Leibler divergence to measure the (dis-)agreement of the sample distribution and the original distribution of the variable, which, in the described case, is inconveniently infinite. Several sample-based distribution estimators exist which assure nonzero bin probability, such as adding one counter to each zero-probability bin of the sample histogram, adding a small probability to the sam...
We develop a simple Quantile Spacing (QS) method for accurate probabilistic estimation of one‐dimens...
The paper proposes a new non-parametric density estimator from region-censored observations with app...
Abstract:- Maximum entropy (MaxEnt) principle is a method for analyzing the available information in...
When constructing discrete (binned) distributions from samples of a data set, applications exist whe...
Shannon entropy of a probability distribution gives a weighted mean of a measure of information that...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
This paper extends maximum entropy estimation of discrete probability distributions to the continuou...
The maximum entropy method is a theoretically sound approach to construct an analytical form for the...
<div><p>In high throughput applications, such as those found in bioinformatics and finance, it is im...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
In high throughput applications, such as those found in bioinformatics and finance, it is important ...
Estimation of Distribution Algorithms (EDA) have been proposed as an extension of genetic algorithms...
We develop a simple Quantile Spacing (QS) method for accurate probabilistic estimation of one-dimens...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
We develop a simple Quantile Spacing (QS) method for accurate probabilistic estimation of one‐dimens...
The paper proposes a new non-parametric density estimator from region-censored observations with app...
Abstract:- Maximum entropy (MaxEnt) principle is a method for analyzing the available information in...
When constructing discrete (binned) distributions from samples of a data set, applications exist whe...
Shannon entropy of a probability distribution gives a weighted mean of a measure of information that...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
This paper extends maximum entropy estimation of discrete probability distributions to the continuou...
The maximum entropy method is a theoretically sound approach to construct an analytical form for the...
<div><p>In high throughput applications, such as those found in bioinformatics and finance, it is im...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
In high throughput applications, such as those found in bioinformatics and finance, it is important ...
Estimation of Distribution Algorithms (EDA) have been proposed as an extension of genetic algorithms...
We develop a simple Quantile Spacing (QS) method for accurate probabilistic estimation of one-dimens...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
We develop a simple Quantile Spacing (QS) method for accurate probabilistic estimation of one‐dimens...
The paper proposes a new non-parametric density estimator from region-censored observations with app...
Abstract:- Maximum entropy (MaxEnt) principle is a method for analyzing the available information in...