Context is vital for commonsense moral reasoning. "Lying to a friend" is wrong if it is meant to deceive them, but may be morally okay if it is intended to protect them. Such nuanced but salient contextual information can potentially flip the moral judgment of an action. Thus, we present ClarifyDelphi, an interactive system that elicits missing contexts of a moral situation by generating clarification questions such as "Why did you lie to your friend?". Our approach is inspired by the observation that questions whose potential answers lead to diverging moral judgments are the most informative. We learn to generate questions using Reinforcement Learning, by maximizing the divergence between moral judgements of hypothetical answers to a question. Human evaluation shows that our system generates more relevant, informative and defeasible questions compared to other question generation baselines. ClarifyDelphi assists informed moral reasoning processes by seeking additional morally consequential context to disambiguate social and moral situations.
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Pre-trained language models, despite their rapid advancements powered by scale, still fall short of robust commonsense capabilities. And yet, scale appears to be the winning recipe; after all, the largest models seem to have acquired the largest amount of commonsense capabilities. Or is it? In this paper, we investigate the possibility of a seemingly impossible match: can smaller language models with dismal commonsense capabilities (i.e., GPT-2), ever win over models that are orders of magnitude larger and better (i.e., GPT-3), if the smaller models are powered with novel commonsense distillation algorithms? The key intellectual question we ask here is whether it is possible, if at all, to design a learning algorithm that does not benefit from scale, yet leads to a competitive level of commonsense acquisition. In this work, we study the generative models of commonsense knowledge, focusing on the task of generating generics, statements of commonsense facts about everyday concepts, e.g., birds can fly. We introduce a novel commonsense distillation framework, I2D2, that loosely follows the Symbolic Knowledge Distillation of West et al. but breaks the dependence on the extreme-scale models as the teacher model by two innovations: (1) the novel adaptation of NeuroLogic Decoding to enhance the generation quality of the weak, off-the-shelf language models, and (2) self-imitation learning to iteratively learn from the model's own enhanced commonsense acquisition capabilities. Empirical results suggest that scale is not the only way, as novel algorithms can be a promising alternative. Moreover, our study leads to a new corpus of generics, Gen-A-Tomic, that is of the largest and highest quality available to date.
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我们挑战AI模型,以“展示”对《纽约客》标题比赛的复杂多模式幽默的理解。具体而言,我们开发了三个精心限制的任务,以掌握图像和标题之间的潜在复杂和意外的关系,并且对人类经验的广泛品种产生了复杂和意外的寓意;这些是纽约口径卡通的标志。我们调查了直接将卡通像素和字幕输入的视觉和语言模型,以及仅通过提供图像的文本描述来规避图像处理的仅限语言模型。即使我们为卡通图像提供了丰富的多方面注释,我们也可以确定高质量的机器学习模型(例如,微调,175b参数语言模型)和人类之间的性能差距。我们公开发布我们的语料库,包括描述图像的位置/实体的注释,场景的不寻常以及对笑话的解释。
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人类具有出色的能力来推理绑架并假设超出图像的字面内容的内容。通过识别散布在整个场景中的具体视觉线索,我们几乎不禁根据我们的日常经验和对世界的知识来提出可能的推论。例如,如果我们在道路旁边看到一个“ 20英里 /小时”的标志,我们可能会假设街道位于居民区(而不是在高速公路上),即使没有房屋。机器可以执行类似的视觉推理吗?我们提出了Sherlock,这是一个带注释的103K图像的语料库,用于测试机器能力,以超出字面图像内容的绑架推理。我们采用免费观看范式:参与者首先观察并识别图像中的显着线索(例如,对象,动作),然后给定线索,然后提供有关场景的合理推论。我们总共收集了363K(线索,推理)对,该对形成了首个绑架的视觉推理数据集。使用我们的语料库,我们测试了三个互补的绑架推理轴。我们评估模型的能力:i)从大型候选人语料库中检索相关推论; ii)通过边界框来定位推论的证据,iii)比较合理的推论,以匹配人类在新收集的19k李克特级判断的诊断语料库上的判断。尽管我们发现具有多任务目标的微调夹RN50x64优于强大的基准,但模型性能与人类一致之间存在着重要的净空。可在http://visualabduction.com/上获得数据,模型和排行榜
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随着人工智能系统变得越来越强大和普遍,人们对机器的道德或缺乏道德的关注变得越来越关注。然而,向机器讲授道德是一项艰巨的任务,因为道德仍然是人类中最激烈的争论问题之一,更不用说AI了。但是,部署到数百万用户的现有AI系统已经在做出充满道德影响的决策,这构成了一个看似不可能的挑战:教学机器的道德意义,而人类继续努力努力。为了探索这一挑战,我们介绍了Delphi,这是一个基于深层神经网络的实验框架,直接训练了描述性道德判断,例如,“帮助朋友”通常是不错的,而“帮助朋友传播假新闻”不是。经验结果提供了对机器伦理的承诺和局限性的新见解。面对新的道德情况,德尔菲(Delphi)表现出强大的概括能力,而现成的神经网络模型表现出明显差的判断,包括不公正的偏见,证实了对明确教学机器的道德意义的必要性。然而,德尔菲并不完美,表现出对普遍性偏见和不一致的敏感性。尽管如此,我们还是展示了不完美的Delphi的积极用例,包括在其他不完美的AI系统中将其用作组件模型。重要的是,我们根据著名的道德理论来解释Delphi的运营化,这使我们提出了重要的未来研究问题。
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The common practice for training commonsense models has gone from-human-to-corpus-to-machine: humans author commonsense knowledge graphs in order to train commonsense models. In this work, we investigate an alternative, from-machine-to-corpus-to-machine: general language models author these commonsense knowledge graphs to train commonsense models. Our study leads to a new framework, Symbolic Knowledge Distillation. As with prior art in Knowledge Distillation (Hinton et al., 2015), our approach uses larger models to teach smaller models. A key difference is that we distill knowledge symbolically-as text-in addition to the neural model. We also distill only one aspect-the commonsense of a general language model teacher, allowing the student to be a different type, a commonsense model. Altogether, we show that careful prompt engineering and a separately trained critic model allow us to selectively distill high-quality causal commonsense from GPT-3, a general language model. Empirical results demonstrate that, for the first time, a human-authored commonsense knowledge graph is surpassed by our automatically distilled variant in all three criteria: quantity, quality, and diversity. In addition, it results in a neural commonsense model that surpasses the teacher model's commonsense capabilities despite its 100x smaller size. We apply this to the ATOMIC resource, and share our new symbolic knowledge graph and commonsense models.
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公开可用的大型预磨语删除媒介(LMS)生成具有显着质量的文本,但仅从左右依次顺序地。因此,它们不会立即适用于打破单向假设的生成任务,例如释放或文本缺陷,需要特定于特定的监督。在本文中,我们呈现反射解码,这是一种新型无监督算法,其允许直接向非顺序任务应用单向LMS。我们的2步方法不需要监督甚至并行对象,只有两个离心的预磨损LMS相反的方向:向前和向后。首先,在上下文化步骤中,我们使用LMS生成过去和未来环境的集合,该上下文共同捕获输入(例如,索引源句)。其次,在反射步骤中,我们在这些“上下文集合”中的条件,生成与它们兼容的输出。综合经验结果表明,反思解码优于涉及释义和绑架文本缺陷的强烈无监督的基线,显着缩小无监督和监督方法之间的差距。反射解码超越了各种度量的多个监督基线,包括人为评估。
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近年来带来了对自然语言理解领域的勤义代表和推理的重新兴趣。新的致辞知识图表(CSKG)的发展是这些进步的核心,因为他们的不同事实可以通过机器学习模型来解决新的和具有挑战性的任务。与此同时,由于全面地涵盖了一般勤杂朗知识所需的大规模规模,对这些资源的质量和覆盖率仍存在疑问。在这项工作中,我们将手动构建的CSKGS分配在NLP代理商遇到的所有情况下,我们将永远不会实现适用所需的覆盖范围。因此,我们提出了一种新的评估框架,用于测试KGS的效用,基于如何从中学习有效的隐式知识表示。通过这一新目标,我们提出了一个含有知识的全新CSKG的新CSKG,该知识不容易获得预用的语言模型。我们与其他领先的CSKG相比,评估其属性,表现了对勤杂朗语言知识资源的第一个大规模对研究。接下来,我们显示原子2020更适合培训知识模型,可以为新的,看不见的实体和事件产生准确,代表知识。最后,通过人类评估,我们表明,尽管使用超过430倍的参数,但GPT-3(175B参数)的几次射击性能较低,而令人印象深刻,令人印象深刻,令人印象深刻,令人印象深刻,仍然低于原子型2020的巴特的知识模型。
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本文档提供了SNACS的详细语言描述(Adposition和Case Supersenses的语义网络; Schneider等,2018),这是52个语义标签(“ Supersenses”)的库存,这些标签(“ Supersenses”)表征了在某种程度上使用ADIP定位和案例标记的使用。粒度水平,如Streusle语料库中所示(https://github.com/nert-nlp/streusle/;版本4.5 track track track offelines guidelines guidelines版本2.6)。尽管SNACS的库存渴望成为普遍的,但该文档是特定于英语的。其他语言的文档将单独发布。版本2是Schneider等人对英语提出的超音库存的修订。 (2015,2016)(此后为“ V1”),这又基于以前的计划。本清单是在对英语的V1语料库注释进行广泛审查后开发的,以及以前未分析的属格案例所有人(Blodgett和Schneider,2018年),并考虑了希伯来语,印地语,韩国和德国的定义和案例现象的考虑。 Hwang等。 (2017)介绍了V2方案的理论基础。 Schneider等。 (2018)总结了该方案,其应用于英语语料库数据以及自动歧义任务。刘等。 (2021)提供了一个英语词法语义识别标签仪,其中包括SNACS标签的输出。该文档也可以与Xposition网站上的语料库数据一起浏览(Gessler等,2022):http://www.xposition.org/
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We study model-based reinforcement learning (RL) for episodic Markov decision processes (MDP) whose transition probability is parametrized by an unknown transition core with features of state and action. Despite much recent progress in analyzing algorithms in the linear MDP setting, the understanding of more general transition models is very restrictive. In this paper, we establish a provably efficient RL algorithm for the MDP whose state transition is given by a multinomial logistic model. To balance the exploration-exploitation trade-off, we propose an upper confidence bound-based algorithm. We show that our proposed algorithm achieves $\tilde{\mathcal{O}}(d \sqrt{H^3 T})$ regret bound where $d$ is the dimension of the transition core, $H$ is the horizon, and $T$ is the total number of steps. To the best of our knowledge, this is the first model-based RL algorithm with multinomial logistic function approximation with provable guarantees. We also comprehensively evaluate our proposed algorithm numerically and show that it consistently outperforms the existing methods, hence achieving both provable efficiency and practical superior performance.
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