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Enhancing Multimedia Imbalanced Concept Detection Using VIMP in Random Forests

机译:在随机森林中使用VIMP增强多媒体不平衡概念检测

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摘要

Recent developments in social media and cloud storage lead to an exponential growth in the amount of multimedia data, which increases the complexity of managing, storing, indexing, and retrieving information from such big data. Many current content-based concept detection approaches lag from successfully bridging the semantic gap. To solve this problem, a multi-stage random forest framework is proposed to generate predictor variables based on multivariate regressions using variable importance (VIMP). By fine tuning the forests and significantly reducing the predictor variables, the concept detection scores are evaluated when the concept of interest is rare and imbalanced, i.e., having little collaboration with other high level concepts. Using classical multivariate statistics, estimating the value of one coordinate using other coordinates standardizes the covariates and it depends upon the variance of the correlations instead of the mean. Thus, conditional dependence on the data being normally distributed is eliminated. Experimental results demonstrate that the proposed framework outperforms those approaches in the comparison in terms of the Mean Average Precision (MAP) values.
机译:社交媒体和云存储的最新发展导致多媒体数据量呈指数增长,这增加了管理,存储,索引和从大数据中检索信息的复杂性。当前许多基于内容的概念检测方法都无法成功弥合语义鸿沟。为了解决这个问题,提出了一种多阶段随机森林框架,该框架基于使用变量重要性(VIMP)的多元回归来生成预测变量。通过对森林进行微调并显着减少预测变量,可以在感兴趣的概念很少且不平衡(即与其他高级概念很少协作)时评估概念检测分数。使用经典的多元统计量,使用其他坐标估计一个坐标的值可以使协变量标准化,并且取决于相关性的方差而不是均值。因此,消除了对正态分布的数据的条件依赖性。实验结果表明,相对于平均平均精度(MAP)值,该框架在比较中优于这些方法。

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