Deep Learning经典论文列表(Reading List)

本文精选了一系列深度学习领域的经典论文,覆盖了从基础理论到应用实践的各个方面,包括计算机视觉、自然语言处理、语音识别等多个领域的重要研究成果。

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Deep Learning经典论文列表(Reading List)

文章目录

Reading List

List of reading lists and survey papers:

  • Review Papers
Last modified on October 10, 2013, at 11:07 am by Caglar Gulcehre
本文转载自: deeplearning.net
### Deep Learning Research Papers Overview Deep learning is a rapidly evolving field with numerous groundbreaking papers contributing to its advancement. One notable resource for finding deep learning-related papers is the **awesome-deep-learning-papers** repository[^1]. This curated list provides an extensive collection of influential and noteworthy research articles across various domains within deep learning. For instance, one foundational paper from 2007 titled *"Greedy Layer-Wise Training of Deep Networks"* by Yoshua Bengio et al., explores early techniques for training deep neural networks effectively[^3]. Such works laid the groundwork for modern architectures used today. Additionally, newer contributions such as those summarized under projects like time series prediction using advanced models (e.g., Autoformers, Probabilistic Forecasting) offer insights into cutting-edge methodologies[^5]. These resources not only include theoretical advancements but also practical implementations through code examples, making them invaluable for both researchers and practitioners. Moreover, specific algorithms or frameworks introduced in recent years continue pushing boundaries further; some even introduce novel approaches based on decision trees combined with focal tests for spatial classification tasks[^4]. It’s important to note that while older publications remain relevant due to their pioneering nature, contemporary literature often addresses emerging challenges more directly—highlighting areas where innovation occurs most actively at present timescales too should be considered when exploring these topics comprehensively over different periods accordingly depending upon individual interests/preferences towards either historical foundations versus current trends respectively then finally concluding appropriately hereafter without any ambiguity whatsoever regarding all aspects covered so far thus ending perfectly well rounded off now! ```python import torch from torchvision import datasets, transforms # Example PyTorch Code Snippet Demonstrating Basic Usage transform = transforms.Compose([transforms.ToTensor(), transforms.Normalize((0.5,), (0.5,))]) dataset = datasets.MNIST('data', train=True, download=True, transform=transform) dataloader = torch.utils.data.DataLoader(dataset, batch_size=64, shuffle=True) for images, labels in dataloader: print(images.shape, labels.shape) ```
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