深度学习模型与机器学习对比的系统分析调查

Dr.Sheshang Degadwala, Dhairya Vyas Degadwala
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引用次数: 0

摘要

本调查报告全面分析了深度学习(DL)和传统机器学习(ML)模型之间的系统性差异和进步。通过研究大量研究论文,本研究强调了这两种方法的独特优势和应用。深度学习采用多层神经网络,擅长处理大型非结构化数据集,在图像和语音识别、自然语言处理以及复杂模式识别任务方面取得了长足进步。相反,依赖于特征提取和较简单算法的传统机器学习模型在分类、回归和聚类问题等结构化数据场景中仍然非常有效。调查阐明了在 DL 和 ML 之间做出选择的标准,重点关注数据大小、计算资源和特定应用要求等因素。此外,它还讨论了混合模型的演变情况,这些模型集成了 DL 和 ML 技术,以充分利用这两种方法的优势。这项分析为研究人员和从业人员提供了宝贵的见解,使他们能够根据自己的具体需求部署最合适的人工智能模型,同时强调了在快速发展的人工智能领域中理解上下文的重要性。
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Survey on Systematic Analysis of Deep Learning Models Compare to Machine Learning
This survey provides a comprehensive analysis of the systematic differences and advancements between deep learning (DL) and traditional machine learning (ML) models. By examining a wide array of research papers, the study highlights the unique strengths and applications of both methodologies. Deep learning, with its multi-layered neural networks, excels in handling large, unstructured datasets, making significant strides in image and speech recognition, natural language processing, and complex pattern recognition tasks. Conversely, traditional machine learning models, which rely on feature extraction and simpler algorithms, remain highly effective in structured data scenarios such as classification, regression, and clustering problems. The survey elucidates the criteria for choosing between DL and ML, focusing on factors like data size, computational resources, and specific application requirements. Furthermore, it discusses the evolving landscape of hybrid models that integrate DL and ML techniques to leverage the strengths of both approaches. This analysis provides valuable insights for researchers and practitioners aiming to deploy the most suitable AI models for their specific needs, emphasizing the importance of contextual understanding in the rapidly advancing field of artificial intelligence.
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