论文标题
Imagenet十年后:AI的360°视角
Ten Years after ImageNet: A 360° Perspective on AI
论文作者
论文摘要
自神经网络卷土重来已经十年了。在本周年纪念日的提示下,我们对人工智能(AI)有了整体观点。如果我们有足够的高质量标记数据,则有效地解决了认知任务的监督学习。但是,深度神经网络模型不容易解释,因此BlackBox和WhiteBox建模之间的争论已经脱颖而出。注意网络的兴起,自我监督的学习,生成建模和图形神经网络扩大了AI的应用空间。深度学习还推动了增强学习的回归,这是自主决策系统的核心组成部分。新的AI技术造成的可能危害提出了社会技术问题,例如透明度,公平性和问责制。 Big-Tech控制人才,计算资源以及最重要的数据,数据可能导致极端的AI鸿沟。未能满足备受瞩目的高度期望,许多宣布的旗舰项目(例如自动驾驶汽车)可能会引发另一个AI冬季。
It is ten years since neural networks made their spectacular comeback. Prompted by this anniversary, we take a holistic perspective on Artificial Intelligence (AI). Supervised Learning for cognitive tasks is effectively solved - provided we have enough high-quality labeled data. However, deep neural network models are not easily interpretable, and thus the debate between blackbox and whitebox modeling has come to the fore. The rise of attention networks, self-supervised learning, generative modeling, and graph neural networks has widened the application space of AI. Deep Learning has also propelled the return of reinforcement learning as a core building block of autonomous decision making systems. The possible harms made possible by new AI technologies have raised socio-technical issues such as transparency, fairness, and accountability. The dominance of AI by Big-Tech who control talent, computing resources, and most importantly, data may lead to an extreme AI divide. Failure to meet high expectations in high profile, and much heralded flagship projects like self-driving vehicles could trigger another AI winter.