A method for the ethical analysis of brain-inspired AI
暂无分享,去创建一个
Sacha Jennifer van Albada | G. Baldassarre | B. Stahl | Emilio Cartoni | M. Petrovici | M. Farisco | Arleen Salles | A. Rosemann | A. Leach | Mihai A. Petrovici
[1] W. Senn,et al. A neuronal least-action principle for real-time learning in cortical circuits , 2024, bioRxiv.
[2] Eero P. Simoncelli,et al. Catalyzing next-generation Artificial Intelligence through NeuroAI , 2023, Nature Communications.
[3] W. Maass,et al. Structure induces computational function in networks with diverse types of spiking neurons , 2022, bioRxiv.
[4] K. Doya,et al. Social impact and governance of AI and neurotechnologies , 2022, Neural Networks.
[5] G. Indiveri,et al. ReckOn: A 28nm Sub-mm2 Task-Agnostic Spiking Recurrent Neural Network Processor Enabling On-Chip Learning over Second-Long Timescales , 2022, 2022 IEEE International Solid- State Circuits Conference (ISSCC).
[6] Annie B. Friedrich,et al. Rethinking explainability: toward a postphenomenology of black-box artificial intelligence in medicine , 2022, Ethics Inf. Technol..
[7] W. Senn,et al. Evolving interpretable plasticity for spiking networks , 2021, eLife.
[8] Walter Senn,et al. Latent Equilibrium: A unified learning theory for arbitrarily fast computation with arbitrarily slow neurons , 2021, NeurIPS.
[9] Terry Sejnowski,et al. Natural and Artificial Intelligence: A brief introduction to the interplay between AI and neuroscience research , 2021, Neural Networks.
[10] Illah Reza Nourbakhsh,et al. AI ethics , 2021, Commun. ACM.
[11] Kjell Hole,et al. A thousand brains: toward biologically constrained AI , 2021, SN Applied Sciences.
[12] Louis Tao,et al. The Backpropagation Algorithm Implemented on Spiking Neuromorphic Hardware , 2021, ArXiv.
[13] John Lafferty,et al. Convergence and Alignment of Gradient Descentwith Random Back propagation Weights , 2021, NeurIPS.
[14] B. S. Nayak,et al. Rethinking of Marxist perspectives on big data, artificial intelligence (AI) and capitalist economic development , 2021, Technological Forecasting and Social Change.
[15] Adnan Mehonic,et al. Brain-inspired computing needs a master plan , 2021, Nature.
[16] E. Klein,et al. Mapping the Dimensions of Agency , 2021, AJOB neuroscience.
[17] Abeba Birhane,et al. Algorithmic injustice: a relational ethics approach , 2021, Patterns.
[18] W S McCulloch,et al. A logical calculus of the ideas immanent in nervous activity , 1990, The Philosophy of Artificial Intelligence.
[19] John P. Sullins,et al. Great Philosophical Objections to Artificial Intelligence: The History and Legacy of the AI Wars , 2021 .
[20] J. Changeux,et al. A Connectomic Hypothesis for the Hominization of the Brain , 2020, Cerebral cortex.
[21] Andrew M. Saxe,et al. If deep learning is the answer, what is the question? , 2020, Nature Reviews Neuroscience.
[22] Dileep George,et al. From CAPTCHA to Commonsense: How Brain Can Teach Us About Artificial Intelligence , 2020, Frontiers in Computational Neuroscience.
[23] Rohit Nishant,et al. Artificial intelligence for sustainability: Challenges, opportunities, and a research agenda , 2020, Int. J. Inf. Manag..
[24] W. Maass,et al. Online spatio-temporal learning in deep neural networks , 2020, ArXiv.
[25] Sacha Jennifer van Albada,et al. Cortical oscillations support sampling-based computations in spiking neural networks , 2020, PLoS Comput. Biol..
[26] Johannes Schemmel,et al. Surrogate gradients for analog neuromorphic computing , 2020, Proceedings of the National Academy of Sciences.
[27] Beren Millidge,et al. Predictive Coding Approximates Backprop Along Arbitrary Computation Graphs , 2020, Neural Computation.
[28] E. Eleftheriou,et al. Deep learning incorporating biologically inspired neural dynamics and in-memory computing , 2020 .
[29] Mark Chen,et al. Language Models are Few-Shot Learners , 2020, NeurIPS.
[30] T. Lillicrap,et al. Backpropagation and the brain , 2020, Nature Reviews Neuroscience.
[31] Richard Naud,et al. Burst-dependent synaptic plasticity can coordinate learning in hierarchical circuits , 2020, Nature Neuroscience.
[32] Mihai A. Petrovici,et al. Structural plasticity on an accelerated analog neuromorphic hardware system , 2019, Neural Networks.
[33] Virginia Dignum,et al. Responsible Artificial Intelligence: How to Develop and Use AI in a Responsible Way , 2019, Artificial Intelligence: Foundations, Theory, and Algorithms.
[34] Surya Ganguli,et al. A deep learning framework for neuroscience , 2019, Nature Neuroscience.
[35] Matthias Bethge,et al. Engineering a Less Artificial Intelligence , 2019, Neuron.
[36] Uri Hasson,et al. Direct Fit to Nature: An Evolutionary Perspective on Biological and Artificial Neural Networks , 2019, Neuron.
[37] Wolfgang Maass,et al. A solution to the learning dilemma for recurrent networks of spiking neurons , 2019, Nature Communications.
[38] K. Amunts,et al. The Human Brain Project—Synergy between neuroscience, computing, informatics, and brain-inspired technologies , 2019, PLoS biology.
[39] Ryan Shandler,et al. The age of surveillance capitalism: the fight for a human future at the new frontier of power , 2019, Journal of Cyber Policy.
[40] Idan Segev,et al. Single cortical neurons as deep artificial neural networks , 2019, Neuron.
[41] Shimon Ullman,et al. Using neuroscience to develop artificial intelligence , 2019, Science.
[42] Dongsuk Jeon,et al. 7.6 A 65nm 236.5nJ/Classification Neuromorphic Processor with 7.5% Energy Overhead On-Chip Learning Using Direct Spike-Only Feedback , 2019, 2019 IEEE International Solid- State Circuits Conference - (ISSCC).
[43] Cecilia Wong. Extended Heredity: A New Understanding of Inheritance and Evolution , 2019, Leonardo.
[44] Shoshana Zuboff. The Age of Surveillance Capitalism: The Fight for a Human Future at the New Frontier of Power , 2019 .
[45] Johannes Schemmel,et al. Demonstrating Advantages of Neuromorphic Computation: A Pilot Study , 2018, Front. Neurosci..
[46] B. Morrison,et al. Glia-neuron energy metabolism in health and diseases: New insights into the role of nervous system metabolic transporters , 2018, Experimental Neurology.
[47] Yoshua Bengio,et al. Dendritic cortical microcircuits approximate the backpropagation algorithm , 2018, NeurIPS.
[48] Mu-ming Poo,et al. Towards brain-inspired artificial intelligence , 2018, National Science Review.
[49] Paul Nemitz,et al. Constitutional democracy and technology in the age of artificial intelligence , 2018, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences.
[50] Ioannis A. Kakadiaris,et al. Confidence-Driven Network for Point-to-Set Matching , 2018, 2018 24th International Conference on Pattern Recognition (ICPR).
[51] Francesco Mannella,et al. General differential Hebbian learning: Capturing temporal relations between events in neural networks and the brain , 2018, PLoS Comput. Biol..
[52] Paul Müller,et al. Accelerated Physical Emulation of Bayesian Inference in Spiking Neural Networks , 2018, Front. Neurosci..
[53] Hyrum S. Anderson,et al. The Malicious Use of Artificial Intelligence: Forecasting, Prevention, and Mitigation , 2018, ArXiv.
[54] Peter A. Gloor,et al. In the shades of the uncanny valley: An experimental study of human-chatbot interaction , 2018, Future Gener. Comput. Syst..
[55] D. Hassabis,et al. Neuroscience-Inspired Artificial Intelligence , 2017, Neuron.
[56] F. Vidal,et al. Being Brains: Making the Cerebral Subject , 2017 .
[57] Michael P. Flynn,et al. A 3.43TOPS/W 48.9pJ/pixel 50.1nJ/classification 512 analog neuron sparse coding neural network with on-chip learning and classification in 40nm CMOS , 2017, 2017 Symposium on VLSI Circuits.
[58] K. Yeung. Algorithmic Regulation: A Critical Interrogation , 2017 .
[59] Colin J. Akerman,et al. Random synaptic feedback weights support error backpropagation for deep learning , 2016, Nature Communications.
[60] D. Schwarzkopf,et al. Unexpected arousal modulates the influence of sensory noise on confidence , 2016, eLife.
[61] P. J. Magistretti,et al. Regulation of neuron–astrocyte metabolic coupling across the sleep–wake cycle , 2016, Neuroscience.
[62] Andrew S. Cassidy,et al. Convolutional networks for fast, energy-efficient neuromorphic computing , 2016, Proceedings of the National Academy of Sciences.
[63] Robert C. Wilson,et al. Reinforcement Learning in Multidimensional Environments Relies on Attention Mechanisms , 2015, The Journal of Neuroscience.
[64] Dimitri Ognibene,et al. Ecological Active Vision: Four Bioinspired Principles to Integrate Bottom–Up and Adaptive Top–Down Attention Tested With a Simple Camera-Arm Robot , 2015, IEEE Transactions on Autonomous Mental Development.
[65] C. Tallon-Baudry,et al. The neural subjective frame: from bodily signals to perceptual consciousness , 2014, Philosophical Transactions of the Royal Society B: Biological Sciences.
[66] Johannes Schemmel,et al. Characterization and Compensation of Network-Level Anomalies in Mixed-Signal Neuromorphic Modeling Platforms , 2014, PloS one.
[67] Marco Mirolli,et al. Which is the best intrinsic motivation signal for learning multiple skills? , 2013, Front. Neurorobot..
[68] Nikola T. Markov,et al. Anatomy of hierarchy: Feedforward and feedback pathways in macaque visual cortex , 2013, The Journal of comparative neurology.
[69] S. B. Nair,et al. Bio-inspired artificial intelligence , 2012, 2012 3rd National Conference on Emerging Trends and Applications in Computer Science.
[70] M. Miller. Agency , 2010 .
[71] C. Pennartz. Identification and integration of sensory modalities: Neural basis and relation to consciousness , 2009, Consciousness and Cognition.
[72] K. Evers. Towards a philosophy for neuroethics , 2007, EMBO reports.
[73] Johannes Schemmel,et al. Implementing Synaptic Plasticity in a VLSI Spiking Neural Network Model , 2006, The 2006 IEEE International Joint Conference on Neural Network Proceedings.
[74] G. Carmignoto,et al. Astrocyte control of synaptic transmission and neurovascular coupling. , 2006, Physiological reviews.
[75] E. Marder,et al. Similar network activity from disparate circuit parameters , 2004, Nature Neuroscience.
[76] Bartlett W. Mel,et al. Dendrites: bug or feature? , 2003, Current Opinion in Neurobiology.
[77] Bartlett W. Mel,et al. Pyramidal Neuron as Two-Layer Neural Network , 2003, Neuron.
[78] Henry Markram,et al. Real-Time Computing Without Stable States: A New Framework for Neural Computation Based on Perturbations , 2002, Neural Computation.
[79] S. Laughlin,et al. An Energy Budget for Signaling in the Grey Matter of the Brain , 2001, Journal of cerebral blood flow and metabolism : official journal of the International Society of Cerebral Blood Flow and Metabolism.
[80] L. Abbott,et al. Competitive Hebbian learning through spike-timing-dependent synaptic plasticity , 2000, Nature Neuroscience.
[81] G. Bi,et al. Synaptic Modifications in Cultured Hippocampal Neurons: Dependence on Spike Timing, Synaptic Strength, and Postsynaptic Cell Type , 1998, The Journal of Neuroscience.
[82] Wulfram Gerstner,et al. A neuronal learning rule for sub-millisecond temporal coding , 1996, Nature.
[83] Francis Crick,et al. The recent excitement about neural networks , 1989, Nature.
[84] Norbert Wiener,et al. The human use of human beings - cybernetics and society , 1988 .
[85] J. Changeux,et al. A theory of the epigenesis of neuronal networks by selective stabilization of synapses. , 1973, Proceedings of the National Academy of Sciences of the United States of America.
[86] S C Kleene,et al. Representation of Events in Nerve Nets and Finite Automata , 1951 .
[87] A. M. Turing,et al. Computing Machinery and Intelligence , 1950, The Philosophy of Artificial Intelligence.
[88] Laura Kriener,et al. Fast and Energy-efficient Deep Neuromorphic Learning , 2021, ERCIM News.
[89] B. Stahl. Artificial Intelligence for a Better Future: An Ecosystem Perspective on the Ethics of AI and Emerging Digital Technologies , 2021 .
[90] K. Brockmann,et al. RESPONSIBLE ARTIFICIAL INTELLIGENCE RESEARCH AND INNOVATION FOR INTERNATIONAL PEACE AND SECURITY , 2020 .
[91] Pieter R. Roelfsema,et al. Attention-Gated Brain Propagation: How the brain can implement reward-based error backpropagation , 2020, NeurIPS.
[92] Andreas M. Kaplan,et al. Siri, Siri, in my hand: Who’s the fairest in the land? On the interpretations, illustrations, and implications of artificial intelligence , 2019, Business Horizons.
[93] S. Vanneste,et al. The moral brain : essays on the evolutionary and neuroscientific aspects of morality , 2009 .
[94] Blay Whitby,et al. Ethical AI , 2004, Artificial Intelligence Review.
[95] Nuttapong Chentanez,et al. Intrinsically Motivated Learning of Hierarchical Collections of Skills , 2004 .
[96] G. Bi,et al. Synaptic modification by correlated activity: Hebb's postulate revisited. , 2001, Annual review of neuroscience.
[97] Rajesh P. N. Rao,et al. Predictive coding in the visual cortex: a functional interpretation of some extra-classical receptive-field effects. , 1999 .
[98] A. Hodgkin,et al. A quantitative description of membrane current and its application to conduction and excitation in nerve , 1990, Bulletin of mathematical biology.
[99] D. Davidson. Actions, Reasons, And Causes , 1980 .
[100] Дрейфус Хьюберт,et al. Чего не могут вычислительные машины: Критика искусственного разума. (What computers cant do: A critique of artificial reason) , 1978 .
[101] Harry G. Frankfurt,et al. The importance of what we care about: Freedom of the will and the concept of a person , 1971 .