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Autodidactic learning and reasoning.

机译:自学学习和推理。

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摘要

The formal study of intelligence has largely focused on learning and reasoning, the processes by which knowledge is, respectively, acquired and applied. This dissertation investigates how the two processes may be undertaken together in an autodidactic, or self-taught, manner. The thesis put forward is that the development of such a unified framework rests on the principled understanding of a third process, that of sensing.;Sensing is formalized in this dissertation as the process by which some underlying reality completely specifying a state of affairs is mapped to an appearance explicitly offering only partial information. Learning is employed to discover the structure of the reality, and reasoning is employed to recover as much of the missing information as possible. Emphasis is placed on the tractability of learning and reasoning, and on the existence of formal guarantees on the accuracy of the information recovered, making only minimal assumptions on the nature of information loss during the sensing phase.;An investigation of the conditions under which the task of information recovery is feasible is undertaken. It is shown that it suffices, and is optimal in some precisely defined sense, to induce rules that are simply consistent with the observed appearances. For environments with structure expressible via monotone rules, learning consistently from partial appearances reduces to learning from complete appearances, allowing for known positive results to be lifted to the case of autodidactic learning. On the negative side, there exist environments where partial appearances compromise learnability.;The contribution of chaining rules---induced or externally provided ones---for information recovery is then examined, and is shown to be that of increasing the combined predictive soundness and completeness. This result provides apparently the first formal separation between multi-layered and single-layered reasoning in this context.;It is further established that the learning and reasoning processes cannot be completely decoupled in the autodidactic setting. Instead, an approach that interleaves the two processes is introduced, which proceeds by learning the rules to be employed for multi-layered reasoning in an iterative manner, one layer at a time. This approach of employing interim reasoning, or reasoning while learning, is shown to suffice and to be a universal approach for the induction of knowledge that is to be reasoned with.;The design and implementation of a system for automatically acquiring and manipulating knowledge is finally considered. Semantic information extracted from a natural language text corpus is interpreted, following the theory, as partial information about the real world. It is argued that rules induced from such information capture some commonsense knowledge. This knowledge is subsequently employed to recover information that is not explicitly stated in the corpus. Experiments were performed on a massive scale, and serious computational challenges had to be addressed to ensure scalability. The experimental setting was designed with the novel goal of detecting whether commonsense knowledge has been extracted. The experimental results presented suggest that this goal has been achieved to a measurable degree.
机译:对智力的正式研究主要集中于学习和推理,即分别获取和应用知识的过程。本文研究了这两种过程如何以自动指导或自学的方式一起进行。本文提出的观点是,这种统一框架的发展基于对第三种过程即传感的原理性理解。显式地仅提供部分信息的外观。学习被用于发现现实的结构,而推理被用于恢复尽可能多的丢失信息。重点放在学习和推理的易处理性上,以及对所恢复信息的准确性的形式保证的存在,仅对感测阶段信息丢失的性质做出最小假设。开展信息恢复工作是可行的。结果表明,在某种精确定义的意义上,它足以引起最佳规则,并且该规则与观察到的外观完全一致。对于具有可通过单调规则表达的结构的环境,从部分外观持续学习会减少到从完整外观开始学习,从而将已知的积极结果提升为自动学习的情况。消极的一面是,存在着部分外表会损害学习能力的环境;然后研究了链接规则-诱导的或外部提供的规则-对信息恢复的贡献,并被证明是增加了组合预测的稳健性和完整性。在这种情况下,该结果显然提供了多层推理和单层推理之间的首次正式分离。进一步确定,在自动教学环境中,学习和推理过程不能完全分离。取而代之的是,引入了一种将两个过程交织在一起的方法,该方法通过以迭代的方式一次一次地学习多层推理所要使用的规则来进行。这种采用临时推理或边学习边推理的方法被证明是足够的,并且是一种通用的方法,可以用来归纳要推理的知识。最终,自动获取和操纵知识的系统的设计和实现将最终实现。考虑过的。根据该理论,将从自然语言文本语料库中提取的语义信息解释为有关现实世界的部分信息。有人认为,从这些信息中得出的规则会捕获一些常识知识。此知识随后用于恢复语料库中未明确说明的信息。实验进行了大规模,为了确保可伸缩性,必须解决严重的计算难题。设计实验环境的目的是检测常识是否已被提取。提出的实验结果表明,这一目标已达到可衡量的程度。

著录项

  • 作者

    Michael, Loizos.;

  • 作者单位

    Harvard University.;

  • 授予单位 Harvard University.;
  • 学科 Artificial Intelligence.;Computer Science.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 348 p.
  • 总页数 348
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;自动化技术、计算机技术;
  • 关键词

  • 入库时间 2022-08-17 11:38:40

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