Veronica Pizziol

31 posts

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Veronica Pizziol

Veronica Pizziol

@VPizziol

Research Fellow @Unibo | Experimental, Behavioral, Environmental Economics

Katılım Mart 2023
190 Takip Edilen126 Takipçiler
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Valerio Capraro
Valerio Capraro@ValerioCapraro·
Finally! This really took several years, but I'm very proud of the outcome 🚀 We introduce a language-based utility function, a new way to capture how words shape decisions. We mathematically derive a prediction in the dictator game. We empirically test this prediction across 107 experimental instructions. We measure language using deep learning and human methods: BERT, MoralBERT, GPT, and experimental subjects. We find that GPT scores do best at predicting human behavior. We provide suggestive evidence that GPT scores are similar to human scores, but comparatively more detached from emotions. We show that our method is portable: We derive predictions and empirically test them also in equity-efficiency trade-off, ultimatum, and corruption games. Overall, these results suggest that language is a quantifiable dimension of economic decision making. Link to the preprint in the first comment. Joint with Roberto Di Paolo and @VPizziol
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Valerio Capraro
Valerio Capraro@ValerioCapraro·
💥New perspective!💥 In this article, we make what we believe are three important points: 1. We review a growing body of literature showing that human behavior in economic games is not solely dependent on the economic consequences of available actions but also on the linguistic description of the context and available actions. Therefore, to truly understand human behavior, we need to shift from outcome-based to language-based utility functions. 2. The rise of large language models makes this the right moment for this shift, for two reasons: (i) People will increasingly rely on decisions made with the support of LLM-based systems. This support will come from language-based interactions, making the understanding of how language influences decision-making more crucial than ever. (ii) LLMs are particularly useful for quantifying the linguistic descriptions of contexts and available actions, thereby helping to define utility functions over language. 3. To demonstrate point (ii), we collected 61 experimental instructions from the dictator game, an economic game that captures the balance between self-interest and the interest of others, which is at the heart of many social interactions. Using GPT-4, we conducted sentiment analysis on these game instructions and attempted to predict actual human behavior from the instructions. And it worked! Our meta-analysis shows that sentiment scores explain human behavior beyond economic outcomes. We believe this might represent a first concrete step toward a better understanding of human behavior, one that accounts for the linguistic description of the context. Sentiment analysis can be the key tool to quantifying language in a way that can be incorporated into the utility function. Full paper, open access: royalsocietypublishing.org/doi/epdf/10.10… w/ Roberto Di Paolo, @matjazperc, @VPizziol Let me also mention that we are working on follow-up projects on this topic. If you have comments, ideas or criticisms, we would be very happy to hear from you.
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Brian Jabarian
Brian Jabarian@brian_jabarian·
Super excited to present on AI and experimentation at @JSTOR (one of my fav public good!) and the wider community using experimentation and science in their jobs! #EconTwitter The talk will be based on these two papers: 1) this NBER study with @Econ_4_Everyone and @GaryCharness on how to integrate AI at the different stages of scientific experimentation: design, implementation and analysis twtr.to/9KOpp 2) this early case study from 2020 with Elia Sartori on how we used LLMs to facilitate the incentivized exploration of critical thinking along with its implications for the digital economy and voting behavior possible. twtr.to/jaY2z Join us!
JSTOR@JSTOR

🚀 Discover the impact of Large Language Models (LLMs) on the #scientific practice within #experimentation in #Constellate's upcoming #webinar with Brian Jabarian from The University of Chicago Booth School of Business. Register today: bit.ly/3FIYI6I

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Veronica Pizziol
Veronica Pizziol@VPizziol·
We find that neither the presence nor the correlation of risk significantly affects individual contributions.
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Veronica Pizziol
Veronica Pizziol@VPizziol·
We run an online experiment to investigate the effect of a risk that is independent across group members, a risk that is positively correlated among group members, and a risk that is negatively correlated among group members on cooperation.
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Matteo M. Marini 🇪🇺
Matteo M. Marini 🇪🇺@MatteoMMarini1·
Interested in hosting a lecture on meta-analysis of experimental evidence within your PhD course in Experimental Economics? Then don't miss this chance. On a scale of 1 to 5, PhD students of @unisiena believe that I've been particularly mean to them!😆 Available in April 2024
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Paolo Crosetto
Paolo Crosetto@PaoloCrosetto·
Giulio Regeni was a Cambridge PhD student. He was murdered 8 years ago in Egypt because of his research. Next week an academic event is to be held in Egypt. 27 other Italian colleagues, @giannetti_cate and me have written a letter to raise awareness. shorturl.at/pTYZ6
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Valerio Capraro
Valerio Capraro@ValerioCapraro·
🔥 New paper 🔥 Generative AI can potentially help us make decisions in a range of contexts Yet, as many decisions carry social implications, for AI to be a reliable assistant it’s crucial that it’s able to capture the balance between self-interest and the interest of others 🧵
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