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Unsupervised Feature Selection by Heuristic Search with Provable Bounds on Suboptimality

机译:通过诸如次优界的引发界的启发式搜索无监督的功能选择

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Identifying a small number of features that can represent the data is a known problem that comes up in areas such as machine learning, knowledge representation, data mining, and numerical linear algebra. Computing an optimal solution is believed to be NP-hard, and there is extensive work on approximation algorithms. Classic approaches exploit the algebraic structure of the underlying matrix, while more recent approaches use randomization. An entirely different approach that uses the A~* heuristic search algorithm to find an optimal solution was recently proposed. Not surprisingly it is limited to effectively selecting only a small number of features. We propose a similar approach related to the Weighted A~* algorithm. This gives algorithms that are not guaranteed to find an optimal solution but run much faster than the A~* approach, enabling effective selection of many features from large datasets. We demonstrate experimentally that these new algorithms are more accurate than the current state-of-the-art while still being practical. Furthermore, they come with an adjustable guarantee on how different their error may be from the smallest possible (optimal) error. Their accuracy can always be increased at the expense of a longer running time.
机译:识别可以代表数据的少量功能是在机器学习,知识表示,数据挖掘和数值线性代数等领域提出的已知问题。计算最佳解决方案被认为是NP - 硬,并且在近似算法上存在广泛的工作。经典方法利用底层矩阵的代数结构,而最近的方法使用随机化。一种完全不同的方法,使用A〜*启发式搜索算法来查找最佳解决方案。毫不奇怪,它仅限于有效选择少量特征。我们提出了一种与加权A〜*算法相关的类似方法。这使得算法不保证找到最佳解决方案,但速度远远超过A〜*方法,使得能够有效地选择来自大型数据集的许多功能。我们通过实验展示这些新算法比当前最先进的算法更准确,同时仍然是实用的。此外,它们具有可调节的保证,以便不同的错误可能来自最小(最佳)错误。他们的准确性总是可以以较长的运行时间为代价而增加。

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