CELER: A 365-Participant Corpus of Eye Movements in L1 and L2 English Reading

Author:

Berzak Yevgeni12,Nakamura Chie3,Smith Amelia4,Weng Emily4,Katz Boris45,Flynn Suzanne6,Levy Roger2

Affiliation:

1. Technion Israel Institute of Technology, Haifa, Israel

2. Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Cambridge, MA, USA

3. Global Center for Science and Engineering, Waseda University, Tokyo, Japan

4. Computer Science and Artificial Intelligence Laboratory, Massachusetts Institute of Technology, Cambridge, MA, USA

5. CBMM: Center for Brains Minds and Machines, Cambridge, MA, USA

6. Linguistics, Massachusetts Institute of Technology, Cambridge, MA, USA

Abstract

Abstract We present CELER (Corpus of Eye Movements in L1 and L2 English Reading), a broad coverage eye-tracking corpus for English. CELER comprises over 320,000 words, and eye-tracking data from 365 participants. Sixty-nine participants are L1 (first language) speakers, and 296 are L2 (second language) speakers from a wide range of English proficiency levels and five different native language backgrounds. As such, CELER has an order of magnitude more L2 participants than any currently available eye movements dataset with L2 readers. Each participant in CELER reads 156 newswire sentences from the Wall Street Journal (WSJ), in a new experimental design where half of the sentences are shared across participants and half are unique to each participant. We provide analyses that compare L1 and L2 participants with respect to standard reading time measures, as well as the effects of frequency, surprisal, and word length on reading times. These analyses validate the corpus and demonstrate some of its strengths. We envision CELER to enable new types of research on language processing and acquisition, and to facilitate interactions between psycholinguistics and natural language processing (NLP).

Funder

National Science Foundation

MIT-IBM Research Lab

MIT Quest for Intelligence

Publisher

MIT Press - Journals

Subject

Cognitive Neuroscience,Linguistics and Language,Developmental and Educational Psychology,Experimental and Cognitive Psychology

Reference33 articles.

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2. Sequence labelling and sequence classification with gaze: Novel uses of eye-tracking data for natural language processing;Barrett;Language and Linguistics Compass,2020

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5. Predicting native language from gaze;Berzak,2017

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