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REPRESENTATIONS AND REASONING FOR GOAL-ORIENTED CONVERSATIONS

机译:面向目标的会话的表示和推理

摘要

The use of a goal-understanding abstraction hierarchy in conjunction with Bayesian inference, decision-theoretic analyses of conversational and observational actions is disclosed to provide machinery for incremental refinement of an understanding about a user's goals through conversation with users. A computer-implemented method receives multiple classes of information regarding a user goal including visual and linguistic clues at a specific level of the abstraction hierarchy, to assess the goal. The method then determines a with a value-of-information analysis the utility of acquiring additional information via making additional observations or by explicitly querying the user versus making a decision to change the level of precision of the analysis of a user's goals. Throughout the analysis, a probability distribution is inferred about the goals of a user. This probability distribution is used in conjunction with a representation of utility of different outcomes to identify informational and navigational actions with the greatest expected utility. In one embodiment, the probability of the leading goal is inferred and used to drive decision making, for example, in assuming the relevance of particular sub-goals of the current goal, where the sub-goals are in a succeeding level of the hierarchy. The probability can be determined in one embodiment by a Bayesian network. If the highest probability sub-goal exceeds a progression threshold, which can be determined by an approximate decision analysis, then this sub-goal is proceeded to in one embodiment-that is, the current level is advanced to the succeeding level, and information gathering is initiated at this new level.
机译:公开了将目标理解抽象层次结构与贝叶斯推理,对话和观察动作的决策理论分析结合使用,以提供用于通过与用户对话来逐步完善对用户目标的理解的机制。计算机实现的方法接收有关用户目标的多类信息,包括抽象层次结构特定级别的视觉和语言线索,以评估目标。然后,该方法利用信息价值分析来确定通过进行附加观察或通过显式查询用户与做出决定以更改用户目标的分析精度水平来获取附加信息的实用性。在整个分析过程中,推断出有关用户目标的概率分布。该概率分布与不同结果的效用表示结合使用,以识别具有最大预期效用的信息和导航行为。在一个实施例中,例如在假设当前目标的特定子目标的相关性时,推断出领先目标的概率并将其用于驱动决策,其中子目标在层次结构的后续级别中。在一个实施例中,可以通过贝叶斯网络来确定概率。如果最高概率子目标超过了可以通过近似决策分析确定的进度阈值,则在一个实施例中,将该子目标进行至即,将当前级别推进到后续级别,并进行信息收集在此新级别启动。

著录项

  • 公开/公告号EP1194891A2

    专利类型

  • 公开/公告日2002-04-10

    原文格式PDF

  • 申请/专利权人 MICROSOFT CORPORATION;

    申请/专利号EP20000941198

  • 发明设计人 HORVITZ ERIC;PAEK TIMOTHY;

    申请日2000-06-02

  • 分类号G06N5/04;

  • 国家 EP

  • 入库时间 2022-08-22 00:33:35

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