Abstract

Sample compression using \U0001d716-net effectively reduces the number of labeled instances required for accurate classification with nearest neighbor algorithms. However, one-shot construction of an \U0001d716-net can be extremely challenging in large-scale distributed data sets. We explore two approaches for distributed sample compression: one where local \U0001d716-net is constructed for each data partition and then merged during an aggregation phase, and one where a single backbone of an \U0001d716-net is constructed from one partition and aggregates target label distributions from other partitions. Both approaches are applied to the problem of malware detection in a complex, real-world data set of Android apps using the nearest neighbor algorithm. Examination of the compression rate, computational efficiency, and predictive power shows that a single backbone of an \U0001d716-net attains favorable performance while achieving a compression rate of 99%.

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