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  1. Does ChatGPT have semantic understanding?Lisa Miracchi Titus - 2024 - Cognitive Systems Research 83 (101174):1-13.
    Over the last decade, AI models of language and word meaning have been dominated by what we might call a statistics-of-occurrence, strategy: these models are deep neural net structures that have been trained on a large amount of unlabeled text with the aim of producing a model that exploits statistical information about word and phrase co-occurrence in order to generate behavior that is similar to what a human might produce, or representations that can be probed to exhibit behavior similar to (...)
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  • Analyzing Machine‐Learned Representations: A Natural Language Case Study.Ishita Dasgupta, Demi Guo, Samuel J. Gershman & Noah D. Goodman - 2020 - Cognitive Science 44 (12):e12925.
    As modern deep networks become more complex, and get closer to human‐like capabilities in certain domains, the question arises as to how the representations and decision rules they learn compare to the ones in humans. In this work, we study representations of sentences in one such artificial system for natural language processing. We first present a diagnostic test dataset to examine the degree of abstract composable structure represented. Analyzing performance on these diagnostic tests indicates a lack of systematicity in representations (...)
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  • Exposing implicit biases and stereotypes in human and artificial intelligence: state of the art and challenges with a focus on gender.Ludovica Marinucci, Claudia Mazzuca & Aldo Gangemi - 2023 - AI and Society 38 (2):747-761.
    Biases in cognition are ubiquitous. Social psychologists suggested biases and stereotypes serve a multifarious set of cognitive goals, while at the same time stressing their potential harmfulness. Recently, biases and stereotypes became the purview of heated debates in the machine learning community too. Researchers and developers are becoming increasingly aware of the fact that some biases, like gender and race biases, are entrenched in the algorithms some AI applications rely upon. Here, taking into account several existing approaches that address the (...)
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  • Combining meta-learned models with process models of cognition.Adam N. Sanborn, Haijiang Yan & Christian Tsvetkov - 2024 - Behavioral and Brain Sciences 47:e163.
    Meta-learned models of cognition make optimal predictions for the actual stimuli presented to participants, but investigating judgment biases by constraining neural networks will be unwieldy. We suggest combining them with cognitive process models, which are more intuitive and explain biases. Rational process models, those that can sequentially sample from the posterior distributions produced by meta-learned models, seem a natural fit.
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  • Simple Co‐Occurrence Statistics Reproducibly Predict Association Ratings.Markus J. Hofmann, Chris Biemann, Chris Westbury, Mariam Murusidze, Markus Conrad & Arthur M. Jacobs - 2018 - Cognitive Science 42 (7):2287-2312.
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  • Trust and Distrust as Artifacts of Language: A Latent Semantic Approach to Studying Their Linguistic Correlates.David Gefen, Jorge E. Fresneda & Kai R. Larsen - 2020 - Frontiers in Psychology 11.
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  • Naturalistic multiattribute choice.Sudeep Bhatia & Neil Stewart - 2018 - Cognition 179 (C):71-88.
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  • Holographic Declarative Memory: Distributional Semantics as the Architecture of Memory.M. A. Kelly, Nipun Arora, Robert L. West & David Reitter - 2020 - Cognitive Science 44 (11):e12904.
    We demonstrate that the key components of cognitive architectures (declarative and procedural memory) and their key capabilities (learning, memory retrieval, probability judgment, and utility estimation) can be implemented as algebraic operations on vectors and tensors in a high‐dimensional space using a distributional semantics model. High‐dimensional vector spaces underlie the success of modern machine learning techniques based on deep learning. However, while neural networks have an impressive ability to process data to find patterns, they do not typically model high‐level cognition, and (...)
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  • The Effect of Evidential Impact on Perceptual Probabilistic Judgments.Marta Mangiarulo, Stefania Pighin, Luca Polonio & Katya Tentori - 2021 - Cognitive Science 45 (1):e12919.
    In a series of three behavioral experiments, we found a systematic distortion of probability judgments concerning elementary visual stimuli. Participants were briefly shown a set of figures that had two features (e.g., a geometric shape and a color) with two possible values each (e.g., triangle or circle and black or white). A figure was then drawn, and participants were informed about the value of one of its features (e.g., that the figure was a “circle”) and had to predict the value (...)
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  • Judgment errors in naturalistic numerical estimation.Wanling Zou & Sudeep Bhatia - 2021 - Cognition 211 (C):104647.
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