Awesome Deep Learning Papers Overview

The most cited deep learning papers

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Awesome - Most Cited Deep Learning Papers

Awesome

[Notice] This list is not being maintained anymore because of the overwhelming amount of deep learning papers published every day since 2017.

A curated list of the most cited deep learning papers (2012-2016)

We believe that there exist classic deep learning papers which are worth reading regardless of their application domain. Rather than providing overwhelming amount of papers, We would like to provide a curated list of the awesome deep learning papers which are considered as must-reads in certain research domains.

Background

Before this list, there exist other awesome deep learning lists, for example, Deep Vision (猸10k) and Awesome Recurrent Neural Networks (猸5.9k). Also, after this list comes out, another awesome list for deep learning beginners, called Deep Learning Papers Reading Roadmap (猸34k), has been created and loved by many deep learning researchers.

Although the Roadmap List includes lots of important deep learning papers, it feels overwhelming for me to read them all. As I mentioned in the introduction, I believe that seminal works can give us lessons regardless of their application domain. Thus, I would like to introduce top 100 deep learning papers here as a good starting point of overviewing deep learning researches.

To get the news for newly released papers everyday, follow my twitter or facebook page!

Awesome list criteria

  1. A list of top 100 deep learning papers published from 2012 to 2016 is suggested.
  2. If a paper is added to the list, another paper (usually from *More Papers from 2016" section) should be removed to keep top 100 papers. (Thus, removing papers is also important contributions as well as adding papers)
  3. Papers that are important, but failed to be included in the list, will be listed in More than Top 100 section.
  4. Please refer to New Papers and Old Papers sections for the papers published in recent 6 months or before 2012.

(Citation criteria)

Please note that we prefer seminal deep learning papers that can be applied to various researches rather than application papers. For that reason, some papers that meet the criteria may not be accepted while others can be. It depends on the impact of the paper, applicability to other researches scarcity of the research domain, and so on.

We need your contributions!

If you have any suggestions (missing papers, new papers, key researchers or typos), please feel free to edit and pull a request. (Please read the contributing guide (猸24k) for further instructions, though just letting me know the title of papers can also be a big contribution to us.)

(Update) You can download all top-100 papers with this (猸24k) and collect all authors' names with this (猸24k). Also, bib file (猸24k) for all top-100 papers are available. Thanks, doodhwala, Sven and grepinsight!

Contents

(More than Top 100)


Understanding / Generalization / Transfer

Optimization / Training Techniques

Unsupervised / Generative Models

Convolutional Neural Network Models

Image: Segmentation / Object Detection

Image / Video / Etc

Natural Language Processing / RNNs

Speech / Other Domain

Reinforcement Learning / Robotics

More Papers from 2016


New papers

Newly published papers (< 6 months) which are worth reading

Old Papers

Classic papers published before 2012

HW / SW / Dataset

Book / Survey / Review

Video Lectures / Tutorials / Blogs

(Lectures)

(Tutorials)

(Blogs)

Appendix: More than Top 100

(2016)

(2015)

(~2014)

Acknowledgement

Thank you for all your contributions. Please make sure to read the contributing guide (猸24k) before you make a pull request.

License

CC0

To the extent possible under law, Terry T. Um has waived all copyright and related or neighboring rights to this work.