Chained Deep Learning Using Generalized Cross-Entropy for Multiple Annotators Classification

Author:

Triana-Martinez Jenniffer Carolina1ORCID,Gil-González Julian2ORCID,Fernandez-Gallego Jose A.3ORCID,Álvarez-Meza Andrés Marino1ORCID,Castellanos-Dominguez Cesar German1ORCID

Affiliation:

1. Signal Processing and Recognition Group, Universidad Nacional de Colombia, Manizales 170003, Colombia

2. Department of Electronics and Computer Science, Pontificia Universidad Javeriana Cali, Cali 760031, Colombia

3. Programa de Ingeniería Electrónica, Facultad de Ingeniería, Universidad de Ibagué, Ibagué 730001, Colombia

Abstract

Supervised learning requires the accurate labeling of instances, usually provided by an expert. Crowdsourcing platforms offer a practical and cost-effective alternative for large datasets when individual annotation is impractical. In addition, these platforms gather labels from multiple labelers. Still, traditional multiple-annotator methods must account for the varying levels of expertise and the noise introduced by unreliable outputs, resulting in decreased performance. In addition, they assume a homogeneous behavior of the labelers across the input feature space, and independence constraints are imposed on outputs. We propose a Generalized Cross-Entropy-based framework using Chained Deep Learning (GCECDL) to code each annotator’s non-stationary patterns regarding the input space while preserving the inter-dependencies among experts through a chained deep learning approach. Experimental results devoted to multiple-annotator classification tasks on several well-known datasets demonstrate that our GCECDL can achieve robust predictive properties, outperforming state-of-the-art algorithms by combining the power of deep learning with a noise-robust loss function to deal with noisy labels. Moreover, network self-regularization is achieved by estimating each labeler’s reliability within the chained approach. Lastly, visual inspection and relevance analysis experiments are conducted to reveal the non-stationary coding of our method. In a nutshell, GCEDL weights reliable labelers as a function of each input sample and achieves suitable discrimination performance with preserved interpretability regarding each annotator’s trustworthiness estimation.

Funder

project “Herramienta de apoyo a la predicción de los efectos de anestésicos locales vía neuroaxial epidural a partir de termografía por infrarrojo”

project “Desarrollo de una herramienta de visión por computador para el análisis de plantas orientado al fortalecimiento de la seguridad alimentaria”

program “Beca de Excelencia Doctoral del Bicentenario-2019-Minciencias”

project “Rice remote monitoring: climate change resilience and agronomical management practices for regional adaptation—RiceClimaRemote”

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference64 articles.

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