Search Results for author: Alexander G. Huth

Found 7 papers, 4 papers with code

Humans and language models diverge when predicting repeating text

1 code implementation10 Oct 2023 Aditya R. Vaidya, Javier Turek, Alexander G. Huth

In contrast with these findings, we present a scenario in which the performance of humans and LMs diverges.

In-Context Learning

Scaling laws for language encoding models in fMRI

1 code implementation NeurIPS 2023 Richard Antonello, Aditya Vaidya, Alexander G. Huth

Representations from transformer-based unidirectional language models are known to be effective at predicting brain responses to natural language.

Self-supervised models of audio effectively explain human cortical responses to speech

no code implementations27 May 2022 Aditya R. Vaidya, Shailee Jain, Alexander G. Huth

Overall, these results show that self-supervised models effectively capture the hierarchy of information relevant to different stages of speech processing in human cortex.

Representation Learning

Physically Plausible Pose Refinement using Fully Differentiable Forces

no code implementations17 May 2021 Akarsh Kumar, Aditya R. Vaidya, Alexander G. Huth

All hand-object interaction is controlled by forces that the two bodies exert on each other, but little work has been done in modeling these underlying forces when doing pose and contact estimation from RGB/RGB-D data.

Object Pose Estimation +1

Multi-timescale Representation Learning in LSTM Language Models

no code implementations ICLR 2021 Shivangi Mahto, Vy A. Vo, Javier S. Turek, Alexander G. Huth

Earlier work has demonstrated that dependencies in natural language tend to decay with distance between words according to a power law.

Language Modelling Representation Learning

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