Text Classification with Born's Rule


This paper presents a text classification algorithm inspired by the notion of superposition of states in quantum physics. By regarding text as a superposition of words, we derive the wave function of a document and we compute the transition probability of the document to a target class according to Born’s rule. Two complementary implementations are presented. In the first one, wave functions are calculated explicitly. The second implementation embeds the classifier in a neural network architecture. Through analysis of three benchmark datasets, we illustrate several aspects of the proposed method, such as classification performance, explainability, and computational efficiency. These ideas are also applicable to non-textual data.

Advances in Neural Information Processing Systems
Emanuele Guidotti
Emanuele Guidotti
PhD Student in Finance

Interdisciplinary research at the intersection of finance, data science, and statistics.