Switch to: References

Add citations

You must login to add citations.
  1. Cheaper Spaces.Matthieu Moullec & Igor Douven - 2024 - Minds and Machines 35 (1):1-21.
    Similarity spaces are standardly constructed by collecting pairwise similarity judgments and subjecting those to a dimension-reduction technique such as multidimensional scaling or principal component analysis. While this approach can be effective, it has some known downsides, most notably, it tends to be costly and has limited generalizability. Recently, a number of authors have attempted to mitigate these issues through machine learning techniques. For instance, neural networks have been trained on human similarity judgments to infer the spatial representation of unseen stimuli. (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Deep problems with neural network models of human vision.Jeffrey S. Bowers, Gaurav Malhotra, Marin Dujmović, Milton Llera Montero, Christian Tsvetkov, Valerio Biscione, Guillermo Puebla, Federico Adolfi, John E. Hummel, Rachel F. Heaton, Benjamin D. Evans, Jeffrey Mitchell & Ryan Blything - 2023 - Behavioral and Brain Sciences 46:e385.
    Deep neural networks (DNNs) have had extraordinary successes in classifying photographic images of objects and are often described as the best models of biological vision. This conclusion is largely based on three sets of findings: (1) DNNs are more accurate than any other model in classifying images taken from various datasets, (2) DNNs do the best job in predicting the pattern of human errors in classifying objects taken from various behavioral datasets, and (3) DNNs do the best job in predicting (...)
    Download  
     
    Export citation  
     
    Bookmark   6 citations  
  • Scene context is predictive of unconstrained object similarity judgments.Caterina Magri, Eric Elmoznino & Michael F. Bonner - 2023 - Cognition 239 (C):105535.
    Download  
     
    Export citation  
     
    Bookmark  
  • Cross‐Situational Word Learning With Multimodal Neural Networks.Wai Keen Vong & Brenden M. Lake - 2022 - Cognitive Science 46 (4).
    Cognitive Science, Volume 46, Issue 4, April 2022.
    Download  
     
    Export citation  
     
    Bookmark   2 citations  
  • Context Matters: Recovering Human Semantic Structure from Machine Learning Analysis of Large‐Scale Text Corpora.Marius Cătălin Iordan, Tyler Giallanza, Cameron T. Ellis, Nicole M. Beckage & Jonathan D. Cohen - 2022 - Cognitive Science 46 (2):e13085.
    Applying machine learning algorithms to automatically infer relationships between concepts from large-scale collections of documents presents a unique opportunity to investigate at scale how human semantic knowledge is organized, how people use it to make fundamental judgments (“How similar are cats and bears?”), and how these judgments depend on the features that describe concepts (e.g., size, furriness). However, efforts to date have exhibited a substantial discrepancy between algorithm predictions and human empirical judgments. Here, we introduce a novel approach to generating (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Relationship between Cognitive Learning Psychological Classification and Neural Network Design Elements.Xing Yang, Tingjun Yong, Meihua Li, Wenying Wang, Huichun Xie & Jinping Du - 2021 - Complexity 2021:1-10.
    This article first analyzes the research background of the design elements of cognitive psychology and neural networks at home and abroad, roughly understands the research status and research background of these two courses at home and abroad, and discusses the application of cognitive psychology to neural networks. The design method has not yet formed a systematic theoretical system. Then, a systematic theoretical analysis of the research in this article is carried out to analyze the relationship between the various characteristics of (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Extracting Low‐Dimensional Psychological Representations from Convolutional Neural Networks.Aditi Jha, Joshua C. Peterson & Thomas L. Griffiths - 2023 - Cognitive Science 47 (1):e13226.
    Convolutional neural networks (CNNs) are increasingly widely used in psychology and neuroscience to predict how human minds and brains respond to visual images. Typically, CNNs represent these images using thousands of features that are learned through extensive training on image datasets. This raises a question: How many of these features are really needed to model human behavior? Here, we attempt to estimate the number of dimensions in CNN representations that are required to capture human psychological representations in two ways: (1) (...)
    Download  
     
    Export citation  
     
    Bookmark   2 citations  
  • Ease of learning explains semantic universals.Shane Steinert-Threlkeld & Jakub Szymanik - 2020 - Cognition 195:104076.
    Download  
     
    Export citation  
     
    Bookmark   10 citations  
  • Similarity Judgment Within and Across Categories: A Comprehensive Model Comparison.Russell Richie & Sudeep Bhatia - 2021 - Cognitive Science 45 (8):e13030.
    Similarity is one of the most important relations humans perceive, arguably subserving category learning and categorization, generalization and discrimination, judgment and decision making, and other cognitive functions. Researchers have proposed a wide range of representations and metrics that could be at play in similarity judgment, yet have not comprehensively compared the power of these representations and metrics for predicting similarity within and across different semantic categories. We performed such a comparison by pairing nine prominent vector semantic representations with seven established (...)
    Download  
     
    Export citation  
     
    Bookmark   4 citations