Seven pillars for the future of artificial intelligence
In recent years, artificial intelligence (AI) research has showcased tremendous potential to positively impact humanity and society. Although AI frequently outperforms humans in tasks related to classification and pattern recognition, it continues to face challenges when dealing with complex tasks s...
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sg-ntu-dr.10356-1734462024-02-06T07:07:47Z Seven pillars for the future of artificial intelligence Cambria, Erik Mao, Rui Chen, Melvin Wang, Zhaoxia Ho, Seng-Beng Murugesan, San School of Computer Science and Engineering School of Humanities Computer and Information Science Similarity Measure Symbol Grounding In recent years, artificial intelligence (AI) research has showcased tremendous potential to positively impact humanity and society. Although AI frequently outperforms humans in tasks related to classification and pattern recognition, it continues to face challenges when dealing with complex tasks such as intuitive decision making, sense disambiguation, sarcasm detection, and narrative understanding as these require advanced kinds of reasoning, e.g., common-sense reasoning and causal reasoning, which have not been emulated satisfactorily yet. To address these shortcomings, we propose seven pillars that we believe represent the key hallmark features for the future of AI, namely, multidisciplinarity, task decomposition, parallel analogy, symbol grounding, similarity measure, intention awareness, and trustworthiness. 2024-02-05T02:36:40Z 2024-02-05T02:36:40Z 2023 Journal Article Cambria, E., Mao, R., Chen, M., Wang, Z., Ho, S. & Murugesan, S. (2023). Seven pillars for the future of artificial intelligence. IEEE Intelligent Systems, 38(6), 62-69. https://dx.doi.org/10.1109/MIS.2023.3329745 1541-1672 https://hdl.handle.net/10356/173446 10.1109/MIS.2023.3329745 2-s2.0-85177436334 6 38 62 69 en IEEE Intelligent Systems © 2023 IEEE. All rights reserved. |
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Computer and Information Science Similarity Measure Symbol Grounding Cambria, Erik Mao, Rui Chen, Melvin Wang, Zhaoxia Ho, Seng-Beng Murugesan, San Seven pillars for the future of artificial intelligence |
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In recent years, artificial intelligence (AI) research has showcased tremendous potential to positively impact humanity and society. Although AI frequently outperforms humans in tasks related to classification and pattern recognition, it continues to face challenges when dealing with complex tasks such as intuitive decision making, sense disambiguation, sarcasm detection, and narrative understanding as these require advanced kinds of reasoning, e.g., common-sense reasoning and causal reasoning, which have not been emulated satisfactorily yet. To address these shortcomings, we propose seven pillars that we believe represent the key hallmark features for the future of AI, namely, multidisciplinarity, task decomposition, parallel analogy, symbol grounding, similarity measure, intention awareness, and trustworthiness. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Cambria, Erik Mao, Rui Chen, Melvin Wang, Zhaoxia Ho, Seng-Beng Murugesan, San |
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Article |
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Cambria, Erik Mao, Rui Chen, Melvin Wang, Zhaoxia Ho, Seng-Beng Murugesan, San |
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Cambria, Erik |
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Seven pillars for the future of artificial intelligence |
title_short |
Seven pillars for the future of artificial intelligence |
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Seven pillars for the future of artificial intelligence |
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Seven pillars for the future of artificial intelligence |
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Seven pillars for the future of artificial intelligence |
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seven pillars for the future of artificial intelligence |
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2024 |
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https://hdl.handle.net/10356/173446 |
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