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LINK PREDICTION METHODS FOR GENERATING SPEAKER CONTENT GRAPHS

机译:用于生成扬声器内容图的链路预测方法

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In a speaker content graph, vertices represent speech signals and edges represent speaker similarity. Link prediction methods calculate which potential edges are most likely to connect vertices from the same speaker; those edges are included in the generated speaker content graph. Since a variety of speaker recognition tasks can be performed on a content graph, we provide a set of metrics for evaluating the graph's quality independently of any recognition task. We then describe novel global and incremental algorithms for constructing accurate speaker content graphs that outperform the existing k nearest neighbors link prediction method. We evaluate these algorithms on a NIST speaker recognition corpus.
机译:在扬声器内容图中,顶点表示语音信号,边缘表示扬声器相似性。链路预测方法计算哪些潜在边缘最有可能从同一扬声器连接顶点;这些边缘包含在生成的扬声器内容图中。由于可以在内容图上执行各种扬声器识别任务,因此我们提供了一组测量标准,用于独立于任何识别任务来评估图形的质量。然后,我们描述了用于构建优于现有K最近邻居链路预测方法的准确扬声器内容图的新的全局和增量算法。我们在NIST扬声器识别语料库上评估这些算法。

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