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  1. Homo Heuristicus: Why Biased Minds Make Better Inferences.Gerd Gigerenzer & Henry Brighton - 2009 - Topics in Cognitive Science 1 (1):107-143.
    Heuristics are efficient cognitive processes that ignore information. In contrast to the widely held view that less processing reduces accuracy, the study of heuristics shows that less information, computation, and time can in fact improve accuracy. We review the major progress made so far: the discovery of less-is-more effects; the study of the ecological rationality of heuristics, which examines in which environments a given strategy succeeds or fails, and why; an advancement from vague labels to computational models of heuristics; the (...)
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  • Approximate and Situated Causality in Deep Learning.Jordi Vallverdú - 2020 - Philosophies 5 (1):2.
    Causality is the most important topic in the history of western science, and since the beginning of the statistical paradigm, its meaning has been reconceptualized many times. Causality entered into the realm of multi-causal and statistical scenarios some centuries ago. Despite widespread critics, today deep learning and machine learning advances are not weakening causality but are creating a new way of finding correlations between indirect factors. This process makes it possible for us to talk about approximate causality, as well as (...)
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  • Intelligence without representation.Rodney A. Brooks - 1991 - Artificial Intelligence 47 (1--3):139-159.
    Artificial intelligence research has foundered on the issue of representation. When intelligence is approached in an incremental manner, with strict reliance on interfacing to the real world through perception and action, reliance on representation disappears. In this paper we outline our approach to incrementally building complete intelligent Creatures. The fundamental decomposition of the intelligent system is not into independent information processing units which must interface with each other via representations. Instead, the intelligent system is decomposed into independent and parallel activity (...)
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  • What difference does quantity make? On the epistemology of Big Data in biology.Sabina Leonelli - 2014 - Big Data and Society 1 (1):2053951714534395.
    Is Big Data science a whole new way of doing research? And what difference does data quantity make to knowledge production strategies and their outputs? I argue that the novelty of Big Data science does not lie in the sheer quantity of data involved, but rather in the prominence and status acquired by data as commodity and recognised output, both within and outside of the scientific community and the methods, infrastructures, technologies, skills and knowledge developed to handle data. These developments (...)
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  • AlphaGo, Locked Strategies, and Eco-Cognitive Openness.Lorenzo Magnani - 2019 - Philosophies 4 (1):8.
    Locked and unlocked strategies are at the center of this article, as ways of shedding new light on the cognitive aspects of deep learning machines. The character and the role of these cognitive strategies, which are occurring both in humans and in computational machines, is indeed strictly related to the generation of cognitive outputs, which range from weak to strong level of knowledge creativity. I maintain that these differences lead to important consequences when we analyze computational AI programs, such as (...)
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  • Creative Rationality: towards an Abductive Model of Scientific Change.David Gooding - 1996 - Philosophica 58 (2).
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  • Abduction aiming at empirical progress or even truth approximation leading to a challenge for computational modelling.Theo A. F. Kuipers - 1999 - Foundations of Science 4 (3):307-323.
    This paper primarily deals with theconceptual prospects for generalizing the aim ofabduction from the standard one of explainingsurprising or anomalous observations to that ofempirical progress or even truth approximation. Itturns out that the main abduction task then becomesthe instrumentalist task of theory revision aiming atan empirically more successful theory, relative to theavailable data, but not necessarily compatible withthem. The rest, that is, genuine empirical progress aswell as observational, referential and theoreticaltruth approximation, is a matter of evaluation andselection, and possibly new (...)
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  • The Abductive Structure of Scientific Creativity: An Essay on the Ecology of Cognition.Lorenzo Magnani - 2017 - Cham, Switzerland: Springer Verlag.
    This book employs a new eco-cognitive model of abduction to underline the distributed and embodied nature of scientific cognition. Its main focus is on the knowledge-enhancing virtues of abduction and on the productive role of scientific models. What are the distinctive features that define the kind of knowledge produced by science? To provide an answer to this question, the book first addresses the ideas of Aristotle, who stressed the essential inferential and distributed role of external cognitive tools and epistemic mediators (...)
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  • Epistemic mediators and model-based discovery in science.L. Magnani - 2002 - In Lorenzo Magnani & Nancy J. Nersessian (eds.), Model-Based Reasoning: Science, Technology, Values. Boston, MA, USA: Kluwer Academic/Plenum Publishers. pp. 305--329.
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  • The Deluge of Spurious Correlations in Big Data.Cristian S. Calude & Giuseppe Longo - 2016 - Foundations of Science 22 (3):595-612.
    Very large databases are a major opportunity for science and data analytics is a remarkable new field of investigation in computer science. The effectiveness of these tools is used to support a “philosophy” against the scientific method as developed throughout history. According to this view, computer-discovered correlations should replace understanding and guide prediction and action. Consequently, there will be no need to give scientific meaning to phenomena, by proposing, say, causal relations, since regularities in very large databases are enough: “with (...)
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  • Can Machines Learn How Clouds Work? The Epistemic Implications of Machine Learning Methods in Climate Science.Suzanne Kawamleh - 2021 - Philosophy of Science 88 (5):1008-1020.
    Scientists and decision makers rely on climate models for predictions concerning future climate change. Traditionally, physical processes that are key to predicting extreme events are either directly represented or indirectly represented. Scientists are now replacing physically based parameterizations with neural networks that do not represent physical processes directly or indirectly. I analyze the epistemic implications of this method and argue that it undermines the reliability of model predictions. I attribute the widespread failure in neural network generalizability to the lack of (...)
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  • The eco-cognitive model of abduction II.Lorenzo Magnani - 2016 - Journal of Applied Logic 15:94-129.
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  • The eco-cognitive model of abduction.Lorenzo Magnani - 2015 - Journal of Applied Logic 13 (3):285-315.
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