Christopher Manning: Linguistics and the Development of NLP

The Gradient: Perspectives on AI - A podcast by Daniel Bashir - Thursdays

Categories:

Have suggestions for future podcast guests (or other feedback)? Let us know here!In episode 41 of The Gradient Podcast, Daniel Bashir speaks to Christopher Manning.Chris is the Director of the Stanford AI Lab and an Associate Director of the Stanford Human-Centered Artificial Intelligence Institute. He is an ACM Fellow, an AAAI Fellow, and past President of ACL. His work currently focuses on applying deep learning to natural language processing; it has included tree recursive neural networks, GloVe, neural machine translation, and computational linguistic approaches to parsing, among other topics. Subscribe to The Gradient Podcast:  Apple Podcasts  | Spotify | Pocket Casts | RSSFollow The Gradient on TwitterOutline:* (00:00) Intro* (02:40) Chris’s path to AI through computational linguistics* (06:10) Human language acquisition vs. ML systems* (09:20) Grounding language in the physical world, multimodality and DALL-E 2 vs. Imagen* (26:15) Chris’s Linguistics PhD, splitting time between Stanford and Xerox PARC, corpus-based empirical NLP* (34:45) Rationalist and Empiricist schools in linguistics, Chris’s work in 1990s* (45:30) GloVe and Attention-based Neural Machine Translation, global and local context in language* (50:30) Different Neural Architectures for Language, Chris’s work in the 2010s* (58:00) Large-scale Pretraining, learning to predict the next word helps you learn about the world* (1:00:00) mBERT’s Internal Representations vs. Universal Dependencies Taxonomy* (1:01:30) The Need for Inductive Priors for Language Systems* (1:05:55) Courage in Chris’s Research Career* (1:10:50) Outro (yes Daniel does have a new outro with ~ music ~)Links:* Chris’s webpage* Papers (1990s-2000s)* Distributional Phrase Structure Induction* Fast exact inference with a factored model for Natural Language Parsing* Accurate Unlexicalized Parsing* Corpus-based induction of syntactic structure* Foundations of Statistical Natural Language Processing* Papers (2010s):* Recursive Deep Models for Semantic Compositionality Over a Sentiment Treebank* GloVe* Effective Approaches to Attention-based Neural Machine Translation* Stanford’s Graph-based Neural dependency parser* Papers (2020s)* Electra: Pre-training text encoders as discriminators rather than generators* Finding Universal Grammatical Relations in Multilingual BERT* Emergent linguistic structure in artificial neural networks trained by self-supervision Get full access to The Gradient at thegradientpub.substack.com/subscribe