<?xml version="1.0" encoding="utf-8" standalone="yes"?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom"><channel><title>3 | Pablo Bernabeu</title><link>https://pablobernabeu.github.io/publication_types/3/</link><atom:link href="https://pablobernabeu.github.io/publication_types/3/index.xml" rel="self" type="application/rss+xml"/><description>3</description><generator>Source Themes Academic (https://sourcethemes.com/academic/)</generator><language>en-uk</language><copyright>Pablo Bernabeu, 2015—2026. Licence: [CC BY 4.0](https://creativecommons.org/licenses/by/4.0/). Email: pcbernabeu@gmail.com. Cookies only used by third-party systems such as [Disqus](https://help.disqus.com/en/articles/1717155-use-of-cookies).</copyright><lastBuildDate>Sat, 15 Oct 2022 00:00:00 +0000</lastBuildDate><image><url>https://pablobernabeu.github.io/img/default_preview_image.jpg</url><title>3</title><link>https://pablobernabeu.github.io/publication_types/3/</link></image><item><title>Language and vision in conceptual processing: Multilevel analysis and statistical power</title><link>https://pablobernabeu.github.io/publication/language-vision-conceptual-processing/</link><pubDate>Sat, 15 Oct 2022 00:00:00 +0000</pubDate><guid>https://pablobernabeu.github.io/publication/language-vision-conceptual-processing/</guid><description>
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&lt;div id="study-at-a-glance" class="section level3">
&lt;h3>Study at a glance&lt;/h3>
&lt;div class="mermaid">
graph TD
A["Three datasets: semantic priming,&lt;br/>semantic decision, lexical decision"] --> B["Add language-based and&lt;br/>vision-based measures"]
B --> C["Mixed-effects models across&lt;br/>individuals, words and tasks"]
C --> D["Language-based information&lt;br/>more important than vision-based"]
C --> E["Priming: both stronger&lt;br/>when words shown faster"]
C --> F["Higher-vocabulary readers show&lt;br/>a task-relevance advantage"]
C --> G["Power: 300 participants for&lt;br/>language effects; over 1,000&lt;br/>for vision effects"]
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&lt;div id="related-podcasts" class="section level3">
&lt;h3>Related podcasts&lt;/h3>
&lt;p>&lt;i class="fa-solid fa-wand-magic-sparkles" style='color:darkgrey;'>&lt;/i> &lt;span style="color:darkgrey; font-style:italic; font-size:85%;">Created using NotebookLM, with all the benefits and blind spots of human editing.&lt;/span>&lt;/p>
&lt;iframe allow="autoplay *; encrypted-media *; fullscreen *; clipboard-write" frameborder="0" height="175" style="width:100%;max-width:720px;overflow:hidden;border-radius:10px;" sandbox="allow-forms allow-popups allow-same-origin allow-scripts allow-storage-access-by-user-activation allow-top-navigation-by-user-activation" src="https://embed.podcasts.apple.com/us/podcast/the-architecture-of-meaning-inside-the-words-we-use/id1837010092?i=1000724443996">
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&lt;iframe allow="autoplay *; encrypted-media *; fullscreen *; clipboard-write" frameborder="0" height="175" style="width:100%;max-width:720px;overflow:hidden;border-radius:10px;" sandbox="allow-forms allow-popups allow-same-origin allow-scripts allow-storage-access-by-user-activation allow-top-navigation-by-user-activation" src="https://embed.podcasts.apple.com/us/podcast/behind-the-curtains-methods-used-to-investigate/id1837010092?i=1000725594999">
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&lt;div id="reference" class="section level3">
&lt;h3>Reference&lt;/h3>
&lt;p>Bernabeu, P., Lynott, D., &amp;amp; Connell, L. (2022). &lt;em>Language and vision in conceptual processing: Multilevel analysis and statistical power&lt;/em>. OSF. &lt;a href="https://osf.io/dnskh" class="uri">https://osf.io/dnskh&lt;/a>&lt;/p>
&lt;/div></description></item><item><title>Preregistration: The interplay between linguistic and embodied systems in conceptual processing</title><link>https://pablobernabeu.github.io/publication/the-interplay-between-linguistic-and-embodied-systems-in-conceptual-processing/</link><pubDate>Tue, 05 Jan 2021 00:00:00 +0000</pubDate><guid>https://pablobernabeu.github.io/publication/the-interplay-between-linguistic-and-embodied-systems-in-conceptual-processing/</guid><description>
&lt;div id="study-at-a-glance" class="section level3">
&lt;h3>Study at a glance&lt;/h3>
&lt;div class="mermaid">
graph TD
A["Conceptual processing"] --> B["Linguistic distributional&lt;br/>systems"]
A --> C["Embodied systems"]
B --> D["Word co-occurrence"]
B --> E["Word association"]
C --> F["Sensorimotor information"]
C --> G["Emotional information"]
H["Calgary Semantic Decision&lt;br/>project data"] --> I["Confirmatory&lt;br/>research questions"]
J["Individual differences&lt;br/>in vocabulary size"] --> I
A --> I
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&lt;div id="reference" class="section level3">
&lt;h3>Reference&lt;/h3>
&lt;p>Bernabeu, P., Lynott, D., &amp;amp; Connell, L. (2021). &lt;em>Preregistration: The interplay between linguistic and embodied systems in conceptual processing&lt;/em>. OSF. &lt;a href="https://osf.io/ftydw" class="uri">https://osf.io/ftydw&lt;/a>&lt;/p>
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&lt;div id="related-podcast" class="section level3">
&lt;h3>Related podcast&lt;/h3>
&lt;p>&lt;i class="fa-solid fa-wand-magic-sparkles" style='color:darkgrey;'>&lt;/i> &lt;span style="color:darkgrey; font-style:italic; font-size:85%;">Created using NotebookLM, with all the benefits and blind spots of human editing.&lt;/span>&lt;/p>
&lt;iframe allow="autoplay *; encrypted-media *; fullscreen *; clipboard-write" frameborder="0" height="175" style="width:100%;max-width:720px;overflow:hidden;border-radius:10px;" sandbox="allow-forms allow-popups allow-same-origin allow-scripts allow-storage-access-by-user-activation allow-top-navigation-by-user-activation" src="https://embed.podcasts.apple.com/us/podcast/behind-the-curtains-methods-used-to-investigate/id1837010092?i=1000725594999">
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&lt;/div></description></item><item><title>Dutch modality exclusivity norms for 336 properties and 411 concepts</title><link>https://pablobernabeu.github.io/publication/dutch-modality-exclusivity-norms-for-336-properties-and-411-concepts/</link><pubDate>Mon, 01 Jan 2018 00:00:00 +0000</pubDate><guid>https://pablobernabeu.github.io/publication/dutch-modality-exclusivity-norms-for-336-properties-and-411-concepts/</guid><description>&lt;h3 id="study-at-a-glance">Study at a glance&lt;/h3>
&lt;div class="mermaid">
graph TD
A["42 Dutch speakers"] --> B["Rate auditory, haptic and visual strength&lt;br/>of 336 properties + 411 concepts"]
B --> C["Mean ratings per word&lt;br/>(acceptable reliability)"]
C --> D["Derived measures:&lt;br/>modality exclusivity, perceptual strength"]
C --> E["Linked corpus variables:&lt;br/>length, frequency, distinctiveness,&lt;br/>concreteness, age of acquisition"]
D --> F["Replicate Lynott and&lt;br/>Connell (2009, 2013)"]
F --> G["Uni-, bi- and tri-modal words;&lt;br/>vision most prevalent"]
F --> H["Vision and touch related;&lt;br/>audition more independent"]
F --> I["Properties more perceptual&lt;br/>than concepts"]
F --> J["Sound symbolism: auditory strength&lt;br/>best predicts lexical properties"]
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&lt;h3 id="reference">Reference&lt;/h3>
&lt;p>Bernabeu, P. (2018). &lt;em>Dutch modality exclusivity norms for 336 properties and 411 concepts&lt;/em>. PsyArXiv. &lt;a href="https://doi.org/10.31234/osf.io/s2c5h">https://doi.org/10.31234/osf.io/s2c5h&lt;/a>&lt;/p>
&lt;h3 id="related-podcast">Related podcast&lt;/h3>
&lt;p>&lt;i class="fa-solid fa-wand-magic-sparkles" style='color:darkgrey;'>&lt;/i> &lt;span style='color:darkgrey; font-style:italic; font-size:85%;'>Created using NotebookLM, with all the benefits and blind spots of human editing.&lt;/span>&lt;/p>
&lt;iframe allow="autoplay *; encrypted-media *; fullscreen *; clipboard-write" frameborder="0" height="175" style="width:100%;max-width:720px;overflow:hidden;border-radius:10px;" sandbox="allow-forms allow-popups allow-same-origin allow-scripts allow-storage-access-by-user-activation allow-top-navigation-by-user-activation" src="https://embed.podcasts.apple.com/us/podcast/behind-the-curtains-methods-used-to-investigate/id1837010092?i=1000725594999">&lt;/iframe></description></item></channel></rss>