Down the deep rabbit hole: Untangling deep learning from machine learning and artificial intelligence
Dados Bibliográficos
AUTOR(ES) | |
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ANO | Não informado |
TIPO | Artigo |
PERIÓDICO | First Monday |
ISSN | 1396-0466 |
E-ISSN | 1396-0466 |
EDITORA | University of Illinois |
DOI | 10.5210/fm.v24i2.8237 |
ADICIONADO EM | 2025-08-18 |
Resumo
Interest in deep learning, machine learning, and artificial intelligence from industry and the general public has reached a fever pitch recently. However, these terms are frequently misused, confused, and conflated. This paper serves as a non-technical guide for those interested in a high-level understanding of these increasingly influential notions by exploring briefly the historical context of deep learning, its public presence, and growing concerns over the limitations of these techniques. As a first step, artificial intelligence and machine learning are defined. Next, an overview of the historical background of deep learning reveals its wide scope and deep roots. A case study of a major deep learning implementation is presented in order to analyze public perceptions shaped by companies focused on technology. Finally, a review of deep learning limitations illustrates systemic vulnerabilities and a growing sense of concern over these systems.