Computation and Language · Computer Science
Findings of the BabyLM Challenge: Sample-Efficient Pretraining on Developmentally Plausible Corpora
Alex Warstadt, Aaron Mueller, Leshem Choshen, Ethan Wilcox +7
2025-04-14
Computation and Language · Computer Science
CLIMB: Curriculum Learning for Infant-inspired Model Building
Richard Diehl Martinez, Zebulon Goriely, Hope McGovern, Christopher Davis +3
2023-11-16
Computation and Language · Computer Science
Are BabyLMs Second Language Learners?
Lukas Edman, Lisa Bylinina, Faeze Ghorbanpour, Alexander Fraser
2024-10-29
Computation and Language · Computer Science
Baby's CoThought: Leveraging Large Language Models for Enhanced Reasoning in Compact Models
Zheyu Zhang, Han Yang, Bolei Ma, David Rügamer +1
2023-10-24
Computation and Language · Computer Science
BabyLM Turns 4 and Goes Multilingual: Call for Papers for the 2026 BabyLM Workshop
Leshem Choshen, Ryan Cotterell, Mustafa Omer Gul, Jaap Jumelet +6
2026-02-25
Computation and Language · Computer Science
Call for Papers -- The BabyLM Challenge: Sample-efficient pretraining on a developmentally plausible corpus
Alex Warstadt, Leshem Choshen, Aaron Mueller, Adina Williams +2
2023-01-30
Machine Learning · Computer Science
Exploring Curriculum Learning for Vision-Language Tasks: A Study on Small-Scale Multimodal Training
Rohan Saha, Abrar Fahim, Alona Fyshe, Alex Murphy
2024-10-22
Computation and Language · Computer Science
Teaching Small Language Models to Learn Logic through Meta-Learning
Leonardo Bertolazzi, Manuel Vargas Guzmán, Raffaella Bernardi, Maciej Malicki +1
2026-01-27
Computation and Language · Computer Science
Can training neural language models on a curriculum with developmentally plausible data improve alignment with human reading behavior?
Aryaman Chobey, Oliver Smith, Anzi Wang, Grusha Prasad
2023-12-01
Computation and Language · Computer Science
BabyLMs for isiXhosa: Data-Efficient Language Modelling in a Low-Resource Context
Alexis Matzopoulos, Charl Hendriks, Hishaam Mahomed, Francois Meyer
2025-01-08
Computation and Language · Computer Science
Findings of the Second BabyLM Challenge: Sample-Efficient Pretraining on Developmentally Plausible Corpora
Michael Y. Hu, Aaron Mueller, Candace Ross, Adina Williams +6
2024-12-09
Computation and Language · Computer Science
Learning to Reduce: Optimal Representations of Structured Data in Prompting Large Language Models
Younghun Lee, Sungchul Kim, Tong Yu, Ryan A. Rossi +1
2024-02-23
Machine Learning · Computer Science
A Little Help Goes a Long Way: Efficient LLM Training by Leveraging Small LMs
Ankit Singh Rawat, Veeranjaneyulu Sadhanala, Afshin Rostamizadeh, Ayan Chakrabarti +11
2024-10-25
Computation and Language · Computer Science
Large GPT-like Models are Bad Babies: A Closer Look at the Relationship between Linguistic Competence and Psycholinguistic Measures
Julius Steuer, Marius Mosbach, Dietrich Klakow
2023-11-09
Computation and Language · Computer Science
Context Training with Active Information Seeking
Zeyu Huang, Adhiguna Kuncoro, Qixuan Feng, Jiajun Shen +3
2026-05-15
Computation and Language · Computer Science
Lil-Bevo: Explorations of Strategies for Training Language Models in More Humanlike Ways
Venkata S Govindarajan, Juan Diego Rodriguez, Kaj Bostrom, Kyle Mahowald
2026-04-17
Computation and Language · Computer Science
Generalizing From Short to Long: Effective Data Synthesis for Long-Context Instruction Tuning
Wenhao Zhu, Pinzhen Chen, Hanxu Hu, Shujian Huang +3
2025-02-24
Computation and Language · Computer Science
MindLLM: Pre-training Lightweight Large Language Model from Scratch, Evaluations and Domain Applications
Yizhe Yang, Huashan Sun, Jiawei Li, Runheng Liu +4
2023-10-31
Computation and Language · Computer Science
Can Large Language Models Understand Context?
Yilun Zhu, Joel Ruben Antony Moniz, Shruti Bhargava, Jiarui Lu +5
2024-02-02