“…Those methods rely on non-linear optimization techniques to learn model parameters, which make them substantially more robust for data representation, and their high generalization strength also facilitates dealing efficiently with raw or non-structured data. In this way, deep neural networks are able to achieve deeper abstractions of data, effectively F I G U R E 1 -An example of rating matrix demonstrating considerable advances in a variety of tasks like detection (Ansari et al, 2019;Bang et al, 2019;Maeda et al, 2018;Maeda et al, 2019;Zhang, Cheng, & Ren, 2019), prediction (Luo & Paal, 2019;Nguyen et al, 2019), clustering (Gao et al, 2019;Reyes & Ventura, 2019), and classification (LeCun et al, 2015;Maeda et al, 2018;Manzanera et al, 2019). Last but not least, we emphasize that many other classification techniques could be considered to cope with the problem of CF, such as the Enhanced Probabilistic Neural Networks (Ahmadlou & Adeli, 2010), Neural Dynamic Classification (Rafiei & Adeli, 2017), and the Finite Element Machine classifier (Pereira et al, 2020), Consequently, the study and development of deep learning techniques have facilitated important improvements in many computer science research areas, from which we quote object detection (Antoniades et al, 2018;Molina-Cabello et al, 2018;Vera-Olmos et al, 2018;Wang & Bai, 2018), speech recognition, computer vision Shen et al, 2019), and natural language processing (LeCun et al, 2015).…”