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  Gibbs sampling with people

Harrison, P. M. C., Marjieh, R., Adolfi, F., van Rijn, P., Anglada-Tort, M., Tchernichovski, O., Larrouy-Maestri, P., & Jacoby, N. (2020). Gibbs sampling with people. arXiv. doi:10.17605/OSF.IO/RZK4S.

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アイテムのパーマリンク: https://hdl.handle.net/21.11116/0000-0007-AB77-3 版のパーマリンク: https://hdl.handle.net/21.11116/0000-0007-AB78-2
資料種別: 学術論文

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2008.02595.pdf (全文テキスト(全般)), 8MB
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https://hdl.handle.net/21.11116/0000-0007-AB79-1
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2008.02595.pdf
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 作成者:
Harrison, Peter M. C.1, 著者           
Marjieh, Raja1, 著者           
Adolfi, Federico2, 著者           
van Rijn, Pol2, 著者           
Anglada-Tort, Manuel1, 著者           
Tchernichovski, Ofer3, 著者
Larrouy-Maestri, Pauline2, 著者           
Jacoby, Nori1, 著者           
所属:
1Research Group Computational Auditory Perception, Max Planck Institute for Empirical Aesthetics, Max Planck Society, ou_3024247              
2Department of Neuroscience, Max Planck Institute for Empirical Aesthetics, Max Planck Society, ou_2421697              
3Hunter College CUNY, The CUNY Graduate Center, ou_persistent22              

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 要旨: A core problem in cognitive science and machine learning is to understand how humans derive semantic representations from perceptual objects, such as color from an apple, pleasantness from a musical chord, or seriousness from a face. Markov Chain Monte Carlo with People (MCMCP) is a prominent method for studying such representations, in which participants are presented with binary choice trials constructed such that the decisions follow a Markov Chain Monte Carlo acceptance rule. However, while MCMCP has strong asymptotic properties, its binary choice paradigm generates relatively little information per trial, and its local proposal function makes it slow to explore the parameter space and find the modes of the distribution. Here we therefore generalize MCMCP to a continuous-sampling paradigm, where in each iteration the participant uses a slider to continuously manipulate a single stimulus dimension to optimize a given criterion such as 'pleasantness'. We formulate both methods from a utility-theory perspective, and show that the new method can be interpreted as 'Gibbs Sampling with People' (GSP). Further, we introduce an aggregation parameter to the transition step, and show that this parameter can be manipulated to flexibly shift between Gibbs sampling and deterministic optimization. In an initial study, we show GSP clearly outperforming MCMCP; we then show that GSP provides novel and interpretable results in three other domains, namely musical chords, vocal emotions, and faces. We validate these results through large-scale perceptual rating experiments. The final experiments use GSP to navigate the latent space of a state-of-the-art image synthesis network (StyleGAN), a promising approach for applying GSP to high-dimensional perceptual spaces. We conclude by discussing future cognitive applications and ethical implications.

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言語: eng - English
 日付: 2020-08-06
 出版の状態: オンラインで出版済み
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 査読: 査読あり(内部)
 識別子(DOI, ISBNなど): DOI: 10.17605/OSF.IO/RZK4S.
 学位: -

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出版物名: arXiv
種別: 学術雑誌
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