Our fast-paced digital economy shaped by global competition requires increased data-driven decision-making based on artificial intelligence (AI) and machine learning (ML). The benefits of deep learning (DL) are manifold, but it comes with limitations that have - so far - interfered with widespread industry adoption. This paper explains why DL - despite its popularity - has difficulties speeding up its adoption within business analytics. It is shown - by a mixture of content analysis and empirical study - that the adoption of deep learning is not only affected by computational complexity, lacking big data architecture, lack of transparency (black-box), and skill shortage, but also by the fact that DL does not outperform traditional ML models in the case of structured datasets with fixed-length feature vectors. Deep learning should be regarded as a powerful addition to the existing body of ML models instead of a one size fits all solution.
翻译:由全球竞争形成的快速发展的数字经济要求基于人工智能(AI)和机器学习(ML)的更多数据驱动决策。深层次学习(DL)的好处是多方面的,但同时也存在迄今为止干扰行业广泛采用的限制。本文解释了为什么DL尽管受欢迎,但在企业分析中难以加快采用DL。内容分析和经验研究的结合表明,深层次学习的采用不仅受到计算复杂性、缺乏大数据结构、缺乏透明度(黑盒)和技能短缺的影响,而且由于DL在固定时间特性矢量的结构化数据集方面没有超越传统的ML模型,深层次学习应被视为现有ML模型的有力补充,而不是一刀切的解决办法。