We demonstrate that gaps and distributional patterns embedded within real-valued measurements are inseparable biological and mechanistic information contents of the system. Such patterns are discovered through data-driven possibly gapped histogram, which further leads to the geometry-based analysis of histogram (ANOHT). Constructing a possibly gapped histogram is a complex problem of statistical mechanics due to the ensemble of candidate histograms being captured by a two-layer Ising model. This construction is also a distinctive problem of Information Theory from the perspective of data compression via uniformity. By defining a Hamiltonian (or energy) as a sum of total coding lengths of boundaries and total decoding errors within bins, thi...
The use of histogram data is ubiquitous within the sciences and histograms composed of linear combin...
It is increasingly common for experiments in biology and medicine to involve large numbers of hypoth...
The preprocessing of data is an important task in rough set theory as well as in Entropy. The discre...
We demonstrate that gaps and distributional patterns embedded within real-valued measurements are in...
We demonstrate that gaps and distributional patterns embedded within real-valued measurements are in...
We demonstrate that gaps and distributional patterns embedded within real-valued measurements are in...
We demonstrate that gaps and distributional patterns embedded within real-valued measurements are in...
For a given level of digitization, a number of relative frequencies presented by a histogram constru...
For a given level of digitization, a number of relative frequencies presented by a histogram constru...
For a given level of digitization, a number of relative frequencies presented by a histogram constru...
Current research in statistics has taken interesting new directions, as data collected from scientif...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
A probability distribution over an ordered universe [n] = {1,..., n} is said to be a k-histogram if...
Histograms are among the most popular structures for the succinct summarization of data in a variety...
The use of histogram data is ubiquitous within the sciences and histograms composed of linear combin...
It is increasingly common for experiments in biology and medicine to involve large numbers of hypoth...
The preprocessing of data is an important task in rough set theory as well as in Entropy. The discre...
We demonstrate that gaps and distributional patterns embedded within real-valued measurements are in...
We demonstrate that gaps and distributional patterns embedded within real-valued measurements are in...
We demonstrate that gaps and distributional patterns embedded within real-valued measurements are in...
We demonstrate that gaps and distributional patterns embedded within real-valued measurements are in...
For a given level of digitization, a number of relative frequencies presented by a histogram constru...
For a given level of digitization, a number of relative frequencies presented by a histogram constru...
For a given level of digitization, a number of relative frequencies presented by a histogram constru...
Current research in statistics has taken interesting new directions, as data collected from scientif...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
Histogram data are usually used to represent complex phenomena for which is known not only the range...
A probability distribution over an ordered universe [n] = {1,..., n} is said to be a k-histogram if...
Histograms are among the most popular structures for the succinct summarization of data in a variety...
The use of histogram data is ubiquitous within the sciences and histograms composed of linear combin...
It is increasingly common for experiments in biology and medicine to involve large numbers of hypoth...
The preprocessing of data is an important task in rough set theory as well as in Entropy. The discre...