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      How Noisy is Lexical Decision?

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          Abstract

          Lexical decision is one of the most frequently used tasks in word recognition research. Theoretical conclusions are typically derived from a linear model on the reaction times (RTs) of correct word trials only (e.g., linear regression and ANOVA). Although these models estimate random measurement error for RTs, considering only correct trials implicitly assumes that word/non-word categorizations are without noise: words receive a yes-response because they have been recognized, and they receive a no-response when they are not known. Hence, when participants are presented with the same stimuli on two separate occasions, they are expected to give the same response. We demonstrate that this not true and that responses in a lexical decision task suffer from inconsistency in participants’ response choice, meaning that RTs of “correct” word responses include RTs of trials on which participants did not recognize the stimulus. We obtained estimates of this internal noise using established methods from sensory psychophysics (Burgess and Colborne, 1988). The results show similar noise values as in typical psychophysical signal detection experiments when sensitivity and response bias are taken into account (Neri, 2010). These estimates imply that, with an optimal choice model, only 83–91% of the response choices can be explained (i.e., can be used to derive theoretical conclusions). For word responses, word frequencies below 10 per million yield alarmingly low percentages of consistent responses (near 50%). The same analysis can be applied to RTs, yielding noise estimates about three times higher. Correspondingly, the estimated amount of consistent trial-level variance in RTs is only 8%. These figures are especially relevant given the recent popularity of trial-level lexical decision models using the linear mixed-effects approach (e.g., Baayen et al., 2008).

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          Most cited references25

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          Orthographic processing in visual word recognition: a multiple read-out model.

          A model of orthographic processing is described that postulates read-out from different information dimensions, determined by variable response criteria set on these dimensions. Performance in a perceptual identification task is simulated as the percentage of trials on which a noisy criterion set on the dimension of single word detector activity is reached. Two additional criteria set on the dimensions of total lexical activity and time from stimulus onset are hypothesized to be operational in the lexical decision task. These additional criteria flexibly adjust to changes in stimulus material and task demands, thus accounting for strategic influences on performance in this task. The model unifies results obtained in response-limited and data-limited paradigms and helps resolve a number of inconsistencies in the experimental literature that cannot be accommodated by other current models of visual word recognition.
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            SUBTLEX-NL: a new measure for Dutch word frequency based on film subtitles.

            We present a new database of Dutch word frequencies based on film and television subtitles, and we validate it with a lexical decision study involving 14,000 monosyllabic and disyllabic Dutch words. The new SUBTLEX frequencies explain up to 10% more variance in accuracies and reaction times (RTs) of the lexical decision task than the existing CELEX word frequency norms, which are based largely on edited texts. As is the case for English, an accessibility measure based on contextual diversity explains more of the variance in accuracy and RT than does the raw frequency of occurrence counts. The database is freely available for research purposes and may be downloaded from the authors' university site at http://crr.ugent.be/subtlex-nl or from http://brm.psychonomic-journals.org/content/supplemental.
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              Are lexical decisions a good measure of lexical access? The role of word frequency in the neglected decision stage.

              Three experiments investigated the impact of five lexical variables (instance dominance, category dominance, word frequency, word length in letters, and word length in syllables) on performance in three different tasks involving word recognition: category verification, lexical decision, and pronunciation. Although the same set of words was used in each task, the relationship of the lexical variables to reaction time varied significantly with the task within which the words were embedded. In particular, the effect of word frequency was minimal in the category verification task, whereas it was significantly larger in the pronunciation task and significantly larger yet in the lexical decision task. It is argued that decision processes having little to do with lexical access accentuate the word-frequency effect in the lexical decision task and that results from this task have questionable value in testing the assumption that word frequency orders the lexicon, thereby affecting time to access the mental lexicon. A simple two-stage model is outlined to account for the role of word frequency and other variables in lexical decision. The model is applied to the results of the reported experiments and some of the most important findings in other studies of lexical decision and pronunciation.
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                Author and article information

                Journal
                Front Psychol
                Front Psychol
                Front. Psychology
                Frontiers in Psychology
                Frontiers Research Foundation
                1664-1078
                24 September 2012
                2012
                : 3
                : 348
                Affiliations
                [1] 1simpleGhent University Ghent, Belgium
                [2] 2simpleUniversity of Aberdeen Aberdeen, UK
                Author notes

                Edited by: Keith Rayner, University of California San Diego, USA

                Reviewed by: Steve Lupker, University of Western Ontario, Canada; Philip Allen, University of Akron, USA

                *Correspondence: Kevin Diependaele and Marc Brysbaert, Department of Experimental Psychology, Henri Dunantlaan 2, Ghent 9000, Belgium. e-mail: kevin.diependaele@ 123456gmail.com ; marc.brysbaert@ 123456ugent.be

                This article was submitted to Frontiers in Language Sciences, a specialty of Frontiers in Psychology.

                Article
                10.3389/fpsyg.2012.00348
                3449292
                23015793
                5d3f1e5f-da61-4d15-98d8-1e56055b73eb
                Copyright © 2012 Diependaele, Brysbaert and Neri.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in other forums, provided the original authors and source are credited and subject to any copyright notices concerning any third-party graphics etc.

                History
                : 19 March 2012
                : 29 August 2012
                Page count
                Figures: 3, Tables: 0, Equations: 3, References: 35, Pages: 9, Words: 8481
                Categories
                Psychology
                Original Research

                Clinical Psychology & Psychiatry
                lexical decision,megastudies,internal noise,signal detection,lexicon projects

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