Pattern Recognition in Collective Cognitive Systems: Hybrid Human-Machine Learning (HHML) By Heterogeneous Ensembles
Hesam T. Dashti, Adel Ardalan, Alireza F. Siahpirani, Jernej Tonejc,, Ioan V. Uilecan, Tiago Simas, Bruno Miranda, Rita Ribeiro, Liya Wang, and, Amir H. Assadi

TL;DR
This paper introduces a hybrid human-machine pattern recognition approach leveraging collective cognition and heterogeneous ensembles to improve feature extraction in complex, large-scale data scenarios.
Contribution
It proposes a novel framework combining human expertise and machine algorithms for collaborative pattern recognition in networked systems.
Findings
Enhanced feature extraction accuracy in complex datasets
Effective integration of human intuition with machine processing
Improved collaboration in collective cognitive systems
Abstract
The ubiquitous role of the cyber-infrastructures, such as the WWW, provides myriad opportunities for machine learning and its broad spectrum of application domains taking advantage of digital communication. Pattern classification and feature extraction are among the first applications of machine learning that have received extensive attention. The most remarkable achievements have addressed data sets of moderate-to-large size. The 'data deluge' in the last decade or two has posed new challenges for AI researchers to design new, effective and accurate algorithms for similar tasks using ultra-massive data sets and complex (natural or synthetic) dynamical systems. We propose a novel principled approach to feature extraction in hybrid architectures comprised of humans and machines in networked communication, who collaborate to solve a pre-assigned pattern recognition (feature extraction)…
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Taxonomy
TopicsNeural Networks and Applications · Blind Source Separation Techniques · Neural dynamics and brain function
