Continuous-time deconvolutional regression for psycholinguistic modeling

被引:13
|
作者
Shain, Cory [1 ]
Schuler, William [1 ]
机构
[1] Ohio State Univ, Dept Linguist, Oxley Hall,1712 Neil Ave, Columbus, OH 43210 USA
基金
美国国家科学基金会;
关键词
EYE-MOVEMENTS; HEMODYNAMIC-RESPONSE; DISTRIBUTED LAGS; IMPULSE-RESPONSE; READING TIME; INITIAL DIP; FMRI; LANGUAGE; BRAIN; PREDICTABILITY;
D O I
10.1016/j.cognition.2021.104735
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
The influence of stimuli in psycholinguistic experiments diffuses across time because the human response to language is not instantaneous. The linear models typically used to analyze psycholinguistic data are unable to account for this phenomenon due to strong temporal independence assumptions, while existing deconvolutional methods for estimating diffuse temporal structure model time discretely and therefore cannot be directly applied to natural language stimuli where events (words) have variable duration. In light of evidence that continuous-time deconvolutional regression (CDR) can address these issues (Shain & Schuler, 2018), this article motivates the use of CDR for many experimental settings, exposits some of its mathematical properties, and empirically evaluates the influence of various experimental confounds (noise, multicollinearity, and impulse response misspecification), hyperparameter settings, and response types (behavioral and fMRI). Results show that CDR (1) yields highly consistent estimates across a variety of hyperparameter configurations, (2) faithfully recovers the data-generating model on synthetic data, even under adverse training conditions, and (3) outperforms widely-used statistical approaches when applied to naturalistic reading and fMRI data. In addition, procedures for testing scientific hypotheses using CDR are defined and demonstrated, and empirically-motivated best-practices for CDR modeling are proposed. Results support the use of CDR for analyzing psycholinguistic time series, especially in a naturalistic experimental paradigm.
引用
收藏
页数:53
相关论文
共 50 条
  • [1] NONPARAMETRIC REGRESSION FOR CONTINUOUS-TIME PROCESS
    CHEZE, N
    COMPTES RENDUS DE L ACADEMIE DES SCIENCES SERIE I-MATHEMATIQUE, 1992, 315 (09): : 1009 - 1012
  • [2] Deconvolutional Time Series Regression: A Technique for Modeling Temporally Diffuse Effects
    Shain, Cory
    Schuler, William
    2018 CONFERENCE ON EMPIRICAL METHODS IN NATURAL LANGUAGE PROCESSING (EMNLP 2018), 2018, : 2679 - 2689
  • [3] On the frequency scaling in continuous-time modeling
    Pintelon, R
    Kollár, I
    IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2005, 54 (01) : 318 - 321
  • [4] THRESHOLD AUTOREGRESSIVE MODELING IN CONTINUOUS-TIME
    TONG, H
    YEUNG, I
    STATISTICA SINICA, 1991, 1 (02) : 411 - 430
  • [5] Evolution of continuous-time modeling and simulation
    Åström, KJ
    Elmqvist, H
    Mattsson, SE
    SIMULATION: PAST, PRESENT AND FUTURE, 1998, : 9 - 18
  • [6] On the modeling and the stability of continuous-time ΣΔ-modulators
    Anders, Jens
    Mathis, Wolfgang
    2007 IEEE INTERNATIONAL SYMPOSIUM ON CIRCUITS AND SYSTEMS, VOLS 1-11, 2007, : 9 - 12
  • [7] MODELING OF NEURAL SYSTEMS IN CONTINUOUS-TIME
    CHEN, JW
    CLARK, JW
    KURTEN, KE
    MATHEMATICAL AND COMPUTER MODELLING, 1988, 10 (07) : 503 - 513
  • [8] Continuous-Time Modeling with Spatial Dependence
    Oud, Johan H. L.
    Folmer, Henk
    Patuelli, Roberto
    Nijkamp, Peter
    GEOGRAPHICAL ANALYSIS, 2012, 44 (01) : 29 - 46
  • [9] On sequential estimation of the parameters of continuous-time trigonometric regression
    T. V. Emel’yanova
    V. V. Konev
    Automation and Remote Control, 2016, 77 : 992 - 1008
  • [10] THE BLUE IN CONTINUOUS-TIME REGRESSION MODELS WITH CORRELATED ERRORS
    Dette, Holger
    Pepelyshev, Andrey
    Zhigljavsky, Anatoly
    ANNALS OF STATISTICS, 2019, 47 (04): : 1928 - 1959