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Preference-Based Batch and Sequential Teaching: Towards a Unified View of Models

机译:基于偏好的批量和顺序教学:朝着统一的模型观

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Algorithmic machine teaching studies the interaction between a teacher and a learner where the teacher selects labeled examples aiming at teaching a target hypothesis. In a quest to lower teaching complexity and to achieve more natural teacher-learner interactions, several teaching models and complexity measures have been proposed for both the batch settings (e.g., worst-case, recursive, preference-based, and non-clashing models) as well as the sequential settings (e.g., local preference-based model). To better understand the connections between these different batch and sequential models, we develop a novel framework which captures the teaching process via preference functions Σ. In our framework, each function σ ∈ Σ induces a teacher-learner pair with teaching complexity as TD(σ). We show that the above-mentioned teaching models are equivalent to specific types/families of preference functions in our framework. This equivalence, in turn, allows us to study the differences between two important teaching models, namely σ functions inducing the strongest batch (i.e., non-clashing) model and σ functions inducing a weak sequential (i.e., local preference-based) model. Finally, we identify preference functions inducing a novel family of sequential models with teaching complexity linear in the VC dimension of the hypothesis class: this is in contrast to the best known complexity result for the batch models which is quadratic in the VC dimension.
机译:算法机器教学研究教师和学习者之间的互动,教师选择标记的例子,旨在教授目标假设。在追求教学复杂性并实现更多自然教师的学习者的相互作用中,已经为批处理设置(例如,最坏情况,递归,优先级和非冲突模型)提出了几种教学模式和复杂性措施。以及顺序设置(例如,基于局部偏好的模型)。为了更好地了解这些不同批处理和顺序模型之间的连接,我们开发了一种新颖的框架,通过偏好函数σ捕获教学过程。在我们的框架中,每个功能σ∈Σ引导教师 - 学习者对,与TD(Σ)具有教学复杂性。我们表明上述教学模式等同于我们框架中的特定类型/偏好职能。反过来,这种等价又允许我们研究两个重要的教学模型之间的差异,即Σ函数诱导最强的批次(即非冲突)模型和Σ函数诱导弱顺序(即,基于本地偏好的)模型。最后,我们确定了在假设类的VC维度中具有教学复杂性线性的偏好函数,其中具有教学复杂性线性:这与在VC维度中具有二次的批次模型的最佳已知复杂度结果相反。

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