Deep Learning: Approaches and Challenges
|International Journal of Engineering Trends and Technology (IJETT)||
|© 2018 by IJETT Journal|
|Year of Publication : 2018|
|Authors : Ahmad Akl, Ahmed Moustafa, Ibrahim El-Henawy
|DOI : 10.14445/22315381/IJETT-V65P203|
MLA Style: Ahmad Akl, Ahmed Moustafa, Ibrahim El-Henawy "Deep Learning: Approaches and Challenges" International Journal of Engineering Trends and Technology 65.1 (2018): 9-16.
APA Style:Ahmad Akl, Ahmed Moustafa, Ibrahim El-Henawy (2018). Deep Learning: Approaches and Challenges. International Journal of Engineering Trends and Technology, 65(1), 9-16.
Deep learning(DL) has gained increasing research interests since Hinton propose a fast learning algorithm in 2006 , because of its potential capability to outperform the drawbacks of traditional techniques that depend on engineering-based features in many fields such as computer vision, pattern recognition, speech recognition, natural language processing, and recommendation systems. In this paper, a brief review of various deep learning architectures, and then bierfly describe their challenges such as training data shortage. In addition, Some trends of deep learning optimization using traditional machine learning models are described such as K-nearest neighbor. Finally, a brief section for the most used deep learning toolkits and libraries.
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deep learning, architectures, challenges, new trends, libraries, and toolkits