We proposed statistical analysis of the heterogeneity of literary style in a set of texts that simultaneously use different stylometric characteristics, like word length and the frequency of function words. The data set consists of several tables with the same number of rows, with the i-th row of all tables corresponding to the i-th text. The analysis proposed clusters the rows of all these tables simultaneously into groups with homogeneous style, based on a finite mixture of sets of multinomial models, one set for each table. Different from the usual heuristic cluster analysis approaches, our method naturally incorporates the text size, the discrete nature of the data, and the dependence between categories in the analysis. The model i...
The availability of computing devices and the proliferation of electronic texts (the so-called 'e-te...
In this study we propose a novel, unsupervised clustering methodology for analyzing large datasets. ...
<div><p>In this study we propose a novel, unsupervised clustering methodology for analyzing large da...
We proposed statistical analysis of the heterogeneity of literary style in a set of texts that simul...
The statistical analysis of the heterogeneity of the style of a text often leads to the analysis of ...
In this paper we analyse the word frequency profiles of a set of works from the Shakespearean era to...
In this paper we analyse the word frequency profiles of a set of works from the Shakespearean era to...
In this paper we analyse the word frequency profiles of a set of works from the Shakespearean era to...
A few literary scholars have long claimed that Shakespeare did not write some of his best plays (his...
Writers are often viewed as having an inherent style which can serve as a literary fingerprint. By q...
The statistical analysis of literary style is the part of stylometry that compares measurable charac...
This is an Accepted Manuscript of an article published by Taylor & Francis in “ Quality and Reliabil...
En esta tesis se desarrolla, siempre con el enfoque bayesiano en mente, una metodología estadística ...
Considerable scholarship in stylometry has focused on authorship attribution. Such work is based on ...
The availability of quantitative text analysis methods has provided new waysof analyzing literature ...
The availability of computing devices and the proliferation of electronic texts (the so-called 'e-te...
In this study we propose a novel, unsupervised clustering methodology for analyzing large datasets. ...
<div><p>In this study we propose a novel, unsupervised clustering methodology for analyzing large da...
We proposed statistical analysis of the heterogeneity of literary style in a set of texts that simul...
The statistical analysis of the heterogeneity of the style of a text often leads to the analysis of ...
In this paper we analyse the word frequency profiles of a set of works from the Shakespearean era to...
In this paper we analyse the word frequency profiles of a set of works from the Shakespearean era to...
In this paper we analyse the word frequency profiles of a set of works from the Shakespearean era to...
A few literary scholars have long claimed that Shakespeare did not write some of his best plays (his...
Writers are often viewed as having an inherent style which can serve as a literary fingerprint. By q...
The statistical analysis of literary style is the part of stylometry that compares measurable charac...
This is an Accepted Manuscript of an article published by Taylor & Francis in “ Quality and Reliabil...
En esta tesis se desarrolla, siempre con el enfoque bayesiano en mente, una metodología estadística ...
Considerable scholarship in stylometry has focused on authorship attribution. Such work is based on ...
The availability of quantitative text analysis methods has provided new waysof analyzing literature ...
The availability of computing devices and the proliferation of electronic texts (the so-called 'e-te...
In this study we propose a novel, unsupervised clustering methodology for analyzing large datasets. ...
<div><p>In this study we propose a novel, unsupervised clustering methodology for analyzing large da...