Estimating the Influence of Sequentially Correlated Literary Properties in Textual Classification: A Data-Centric Hypothesis-Testing Approach
Stylometry aims to distinguish authors by analyzing literary traits assumed to reflect semi-conscious choices distinct from elements like genre or theme. However, these components often overlap, complicating text classification based solely on feature distributions. While some literary properties, s...
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Zusammenfassung: | Stylometry aims to distinguish authors by analyzing literary traits assumed
to reflect semi-conscious choices distinct from elements like genre or theme.
However, these components often overlap, complicating text classification based
solely on feature distributions. While some literary properties, such as
thematic content, are likely to manifest as correlations between adjacent text
units, others, like authorial style, may be independent thereof. We introduce a
hypothesis-testing approach to evaluate the influence of sequentially
correlated literary properties on text classification, aiming to determine when
these correlations drive classification. Using a multivariate binary
distribution, our method models sequential correlations between text units as a
stochastic process, assessing the likelihood of clustering across varying
adjacency scales. This enables us to examine whether classification is
dominated by sequentially correlated properties or remains independent. In
experiments on a diverse English prose corpus, our analysis integrates
traditional and neural embeddings within supervised and unsupervised
frameworks. Results demonstrate that our approach effectively identifies when
textual classification is not primarily influenced by sequentially correlated
literary properties, particularly in cases where texts differ in authorial
style or genre rather than by a single author within a similar genre. |
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DOI: | 10.48550/arxiv.2411.04950 |