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Language Processing

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language processing

Discover seminars, jobs, and research tagged with language processing across Neuro.
8 curated items8 Seminars
Updated about 1 year ago
8 items · language processing

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SeminarNeuroscience

LLMs and Human Language Processing

Maryia Toneva, Ariel Goldstein, Jean-Remi King
Max Planck Institute of Software Systems; Hebrew University; École Normale Supérieure
Nov 29, 2024

This webinar convened researchers at the intersection of Artificial Intelligence and Neuroscience to investigate how large language models (LLMs) can serve as valuable “model organisms” for understanding human language processing. Presenters showcased evidence that brain recordings (fMRI, MEG, ECoG) acquired while participants read or listened to unconstrained speech can be predicted by representations extracted from state-of-the-art text- and speech-based LLMs. In particular, text-based LLMs tend to align better with higher-level language regions, capturing more semantic aspects, while speech-based LLMs excel at explaining early auditory cortical responses. However, purely low-level features can drive part of these alignments, complicating interpretations. New methods, including perturbation analyses, highlight which linguistic variables matter for each cortical area and time scale. Further, “brain tuning” of LLMs—fine-tuning on measured neural signals—can improve semantic representations and downstream language tasks. Despite open questions about interpretability and exact neural mechanisms, these results demonstrate that LLMs provide a promising framework for probing the computations underlying human language comprehension and production at multiple spatiotemporal scales.

SeminarNeuroscience

Deep language models as a cognitive model for natural language processing in the human brain

Uri Hasson
Princeton University
Dec 7, 2023
SeminarNeuroscience

Electrophysiological investigations of natural speech and language processing

Edmund Lalor
University of Rochester, USA
Feb 14, 2022
SeminarNeuroscienceRecording

Do deep learning latent spaces resemble human brain representations?

Rufin VanRullen
Centre de Recherche Cerveau et Cognition (CERCO)
Mar 13, 2021

In recent years, artificial neural networks have demonstrated human-like or super-human performance in many tasks including image or speech recognition, natural language processing (NLP), playing Go, chess, poker and video-games. One remarkable feature of the resulting models is that they can develop very intuitive latent representations of their inputs. In these latent spaces, simple linear operations tend to give meaningful results, as in the well-known analogy QUEEN-WOMAN+MAN=KING. We postulate that human brain representations share essential properties with these deep learning latent spaces. To verify this, we test whether artificial latent spaces can serve as a good model for decoding brain activity. We report improvements over state-of-the-art performance for reconstructing seen and imagined face images from fMRI brain activation patterns, using the latent space of a GAN (Generative Adversarial Network) model coupled with a Variational AutoEncoder (VAE). With another GAN model (BigBiGAN), we can decode and reconstruct natural scenes of any category from the corresponding brain activity. Our results suggest that deep learning can produce high-level representations approaching those found in the human brain. Finally, I will discuss whether these deep learning latent spaces could be relevant to the study of consciousness.

SeminarNeuroscienceRecording

Surprising generalizations in the neural implementation of Hebrew and English word reading

Michal Ben Shachar
Bar Ilan University
Jan 5, 2021
SeminarNeuroscienceRecording

Abstraction and Analogy in Natural and Artificial Intelligence

Melanie Mitchell
Santa Fe Institute
Oct 8, 2020

In 1955, John McCarthy and colleagues proposed an AI summer research project with the following aim: “An attempt will be made to find how to make machines use language, form abstractions and concepts, solve kinds of problems now reserved for humans, and improve themselves.” More than six decades later, all of these research topics remain open and actively investigated in the AI community. While AI has made dramatic progress over the last decade in areas such as vision, natural language processing, and robotics, current AI systems still almost entirely lack the ability to form humanlike concepts and abstractions. Some cognitive scientists have proposed that analogy-making is a central mechanism for conceptual abstraction and understanding in humans. Douglas Hofstadter called analogy-making “the core of cognition”, and Hofstadter and co-author Emmanuel Sander noted, “Without concepts there can be no thought, and without analogies there can be no concepts.” In this talk I will reflect on the role played by analogy-making at all levels of intelligence, and on prospects for developing AI systems with humanlike abilities for abstraction and analogy.

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