首页> 外文会议>International Conference on Database Systems for Advanced Applications(DASFAA 2004); 20040317-20040319; Jeju Island; KR >A Novel Representation of Sequence Data Based on Structural Information for Effective Music Retrieval
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A Novel Representation of Sequence Data Based on Structural Information for Effective Music Retrieval

机译:基于结构信息的有效音乐检索序列数据的新型表示

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In this paper, we propose a novel representation of sequences based on the structural information of the sequences. A sequence is represented by a set of rules, which are derived from its subsequences. There are two types of subsequences of interest. One is called frequent pattern, which is a subsequence appearing often enough in the sequence. The other is called correlative pattern, which is a subsequence composed of highly correlated elements. The rules derived from the frequent patterns are called frequent rules, while the ones derived from the correlative patterns are called correlative rules. By considering music objects as sequences, we represent each of them as a set of rules and design a similarity function for effective music retrieval. The experimental results show that our approaches outperform the approaches based on the Markov-model on the average precision.
机译:在本文中,我们基于序列的结构信息提出了一种新颖的序列表示方法。一个序列由一组规则表示,这些规则从其子序列派生而来。有两种类型的关注子序列。一种称为频繁模式,它是在序列中经常出现的子序列。另一个称为相关模式,它是由高度相关元素组成的子序列。从频繁模式得出的规则称为频繁规则,而从相关模式得出的规则称为相关规则。通过将音乐对象视为序列,我们将每个对象表示为一组规则,并设计一个相似函数以进行有效的音乐检索。实验结果表明,在平均精度上,我们的方法优于基于马尔可夫模型的方法。

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