Difference between revisions of "Moonshots"
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* [http://www.wired.com/2016/02/ai-is-changing-the-technology-behind-google-searches/ AI Is Transforming Google Search. The Rest of the Web Is Next | Craig G. Karl - Wired] | * [http://www.wired.com/2016/02/ai-is-changing-the-technology-behind-google-searches/ AI Is Transforming Google Search. The Rest of the Web Is Next | Craig G. Karl - Wired] | ||
| + | * [http://www.technologyreview.com/2019/07/09/134261/ai-nlp-scientific-abstracts-material-science/ AI analyzed 3.3 million scientific abstracts and discovered possible new materials | Karen Hao - MIT Technology Review] | ||
Principles of analogical reasoning have recently been applied in the context of machine learning, for example to develop new methods for classification and preference learning. In this paper, we argue that, while analogical reasoning is certainly useful for constructing new learning algorithms with high predictive accuracy, is is arguably not less interesting from an interpretability and explainability point of view. More specifically, we take the view that an analogy-based approach is a viable alternative to existing approaches in the realm of explainable AI and interpretable machine learning, and that analogy-based explanations of the predictions produced by a machine learning algorithm can complement similarity-based explanations in a meaningful way. [http://arxiv.org/pdf/2005.12800.pdf Towards Analogy-Based Explanations in Machine Learning | Eyke Hüllermeier] | Principles of analogical reasoning have recently been applied in the context of machine learning, for example to develop new methods for classification and preference learning. In this paper, we argue that, while analogical reasoning is certainly useful for constructing new learning algorithms with high predictive accuracy, is is arguably not less interesting from an interpretability and explainability point of view. More specifically, we take the view that an analogy-based approach is a viable alternative to existing approaches in the realm of explainable AI and interpretable machine learning, and that analogy-based explanations of the predictions produced by a machine learning algorithm can complement similarity-based explanations in a meaningful way. [http://arxiv.org/pdf/2005.12800.pdf Towards Analogy-Based Explanations in Machine Learning | Eyke Hüllermeier] | ||
Revision as of 23:03, 23 September 2020
Youtube search... ...Google search
The “Sputnik” moment for China came a year ago when a Google computer program, AlphaGo, beat the world’s top master of the ancient board game of Go. Now, China is racing to become the world leader in artificial-intelligence. In context, what do you think would be a "Moonshot" response?
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The 'moonshot' milestones along the road to Artificial General Intelligence (AGI)...
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Contents
Can Conjure & Ask Questions
Youtube search... ...Google search
Able to Predict the Future
Youtube search... ...Google search
Able to 'Learn' the Wide World Web
Youtube search... ...Google search
Autonomous Vehicles
Youtube search... ...Google search
Learn by Analogy
Youtube search... ...Google search
- AI Is Transforming Google Search. The Rest of the Web Is Next | Craig G. Karl - Wired
- AI analyzed 3.3 million scientific abstracts and discovered possible new materials | Karen Hao - MIT Technology Review
Principles of analogical reasoning have recently been applied in the context of machine learning, for example to develop new methods for classification and preference learning. In this paper, we argue that, while analogical reasoning is certainly useful for constructing new learning algorithms with high predictive accuracy, is is arguably not less interesting from an interpretability and explainability point of view. More specifically, we take the view that an analogy-based approach is a viable alternative to existing approaches in the realm of explainable AI and interpretable machine learning, and that analogy-based explanations of the predictions produced by a machine learning algorithm can complement similarity-based explanations in a meaningful way. Towards Analogy-Based Explanations in Machine Learning | Eyke Hüllermeier
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