ena Voita is a Ph.D. student at the University of Edinburgh and University of Amsterdam. Previously, She was a research scientist at Yandex Research and worked closely with the Yandex Translate team. She still teaches NLP at the Yandex School of Data Analysis. She has created an exciting new NLP course on her website lena-voita.github.io which you folks need to check out! She has one of the most well presented blogs we have ever seen, where she discusses her research in an easily digestable manner. Lena has been investigating many fascinating topics in machine learning and NLP. Today we are going to talk about three of her papers and corresponding blog articles;




Source and Target Contributions to NMT Predictions -- Where she talks about the influential dichotomy between the source and the prefix of neural translation models.


https://arxiv.org/pdf/2010.10907.pdf


https://lena-voita.github.io/posts/source_target_contributions_to_nmt.html




Information-Theoretic Probing with MDL -- Where Lena proposes a technique of evaluating a model using the minimum description length or Kolmogorov complexity of labels given representations rather than something basic like accuracy


https://arxiv.org/pdf/2003.12298.pdf


https://lena-voita.github.io/posts/mdl_probes.html




Evolution of Representations in the Transformer - Lena investigates the evolution of representations of individual tokens in Transformers -- trained with different training objectives (MT, LM, MLM) 


https://arxiv.org/abs/1909.01380


https://lena-voita.github.io/posts/emnlp19_evolution.html




Panel Dr. Tim Scarfe, Yannic Kilcher, Sayak Paul




00:00:00 Kenneth Stanley / Greatness can not be planned house keeping


00:21:09 Kilcher intro


00:28:54 Hello Lena


00:29:21 Tim - Lenas NMT paper


00:35:26 Tim - Minimum Description Length / Probe paper


00:40:12 Tim - Evolution of representations


00:46:40 Lenas NLP course


00:49:18 The peppermint tea situation 


00:49:28 Main Show Kick Off 


00:50:22 Hallucination vs exposure bias 


00:53:04 Lenas focus on explaining the models not SOTA chasing


00:56:34 Probes paper and NLP intepretability


01:02:18 Why standard probing doesnt work


01:12:12 Evolutions of representations paper


01:23:53 BERTScore  and BERT Rediscovers the Classical NLP Pipeline paper


01:25:10 Is the shifting encoding context because of BERT bidirectionality


01:26:43 Objective defines which information we lose on input


01:27:59 How influential is the dataset?


01:29:42 Where is the community going wrong?


01:31:55 Thoughts on GOFAI/Understanding in NLP?


01:36:38 Lena's NLP course 


01:47:40 How to foster better learning / understanding


01:52:17 Lena's toolset and languages


01:54:12 Mathematics is all you need


01:56:03 Programming languages




https://lena-voita.github.io/


https://www.linkedin.com/in/elena-voita/


https://scholar.google.com/citations?user=EcN9o7kAAAAJ&hl=ja


https://twitter.com/lena_voita



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