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

被引:2
作者
Triana-Martinez, Jenniffer Carolina [1 ]
Gil-Gonzalez, Julian [2 ]
Fernandez-Gallego, Jose A. [3 ]
Alvarez-Meza, Andres Marino [1 ]
Castellanos-Dominguez, Cesar German [1 ]
机构
[1] Univ Nacl Colombia, Signal Proc & Recognit Grp, Manizales 170003, Colombia
[2] Pontificia Univ Javeriana Cali, Dept Elect & Comp Sci, Cali 760031, Colombia
[3] Univ Ibague, Fac Ingn, Programa Ingn Elect, Ibague 730001, Colombia
关键词
deep learning; multiple annotators; chained approach; generalized cross-entropy; classification; CROWDS; INCONSISTENT; CLASSIFIERS;
D O I
10.3390/s23073518
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
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.
引用
收藏
页数:19
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