SOTAVerified

The OCON model: an old but gold solution for distributable supervised classification

2024-10-05Code Available0· sign in to hype

Stefano Giacomelli, Marco Giordano, Claudia Rinaldi

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

This paper introduces to a structured application of the One-Class approach and the One-Class-One-Network model for supervised classification tasks, specifically addressing a vowel phonemes classification case study within the Automatic Speech Recognition research field. Through pseudo-Neural Architecture Search and Hyper-Parameters Tuning experiments conducted with an informed grid-search methodology, we achieve classification accuracy comparable to nowadays complex architectures (90.0 - 93.7%). Despite its simplicity, our model prioritizes generalization of language context and distributed applicability, supported by relevant statistical and performance metrics. The experiments code is openly available at our GitHub.

Tasks

Reproductions