基于分布式对象表示的分层编码推理的最优性

Simon Brodeur, J. Rouat
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引用次数: 0

摘要

表示学习的分层方法具有在多个尺度或抽象层次上编码相关特征的能力。然而,大多数分层方法只利用层次结构中的最后一层,或者提供具有大量冗余的多尺度表示。我们认为,在基于对象的表示中,消除跨多个抽象层次的冗余对于有效地表示组合性非常重要。从特征学习作为数据压缩操作的角度出发,提出了一种新的贪婪推理算法。采用基于0范数约束的卷积匹配追踪,将输入信号编码为分布在各层次上的紧凑且非冗余的编码。建立简单和复杂的时间信号合成数据集,评估编码效率,并与这些信号的信息率理论下界进行比较。经验证据表明,该算法能够推断出简单信号的近最优编码。然而,对于物体之间有强烈重叠的复杂信号,该方法就失效了。我们解释了在这种情况下发生的卷积匹配追踪的低效率。这为NP-hard优化问题带来了新的见解,该问题涉及到在推断最优紧凑和分布式基于对象的表示时使用l0范数约束。
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Optimality of inference in hierarchical coding for distributed object-based representations
Hierarchical approaches for representation learning have the ability to encode relevant features at multiple scales or levels of abstraction. However, most hierarchical approaches exploit only the last level in the hierarchy, or provide a multiscale representation that holds a significant amount of redundancy. We argue that removing redundancy across the multiple levels of abstraction is important for an efficient representation of compositionality in object-based representations. With the perspective of feature learning as a data compression operation, we propose a new greedy inference algorithm for hierarchical sparse coding. Convolutional matching pursuit with a L0-norm constraint was used to encode the input signal into compact and non-redundant codes distributed across levels of the hierarchy. Simple and complex synthetic datasets of temporal signals were created to evaluate the encoding efficiency and compare with the theoretical lower bounds on the information rate for those signals. Empirical evidence have shown that the algorithm is able to infer near-optimal codes for simple signals. However, it failed for complex signals with strong overlapping between objects. We explain the inefficiency of convolutional matching pursuit that occurred in such case. This brings new insights about the NP-hard optimization problem related to using L0-norm constraint in inferring optimally compact and distributed object-based representations.
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