最佳显著性理论
词汇判断任务
词汇多样性
众包
计算机科学
自然语言处理
词汇选择
任务(项目管理)
人工智能
购置年龄
词(群论)
心理学
语言学
词汇
词汇项目
认知
经济
神经科学
管理
哲学
心理治疗师
万维网
作者
Cynthia M. Berger,Scott A. Crossley,Stephen Skalicky
标识
DOI:10.1017/s0272263119000019
摘要
Abstract A large dataset of word recognition behavior from nonnative speakers (NNS) of English was collected using an online crowdsourced lexical decision task. Lexical features were used to predict NNS lexical decision latencies and accuracies. Predictors of NNS latencies and accuracy included contextual diversity, age of acquisition, and contextual distinctiveness, while length moderated the impact of contextual diversity and neighborhood size on accuracy. Results have implications for second language word recognition and demonstrate that NNS behavioral data collected through large crowdsourcing projects can afford a rich source for SLA research.
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