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Combination of boosting and discriminative training for natural language call steering systems

机译:自然语言呼叫指导系统的加强训练和区分训练的结合

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We describe the combination of two different techniques to improve natural language call routing: boosting and discriminative training. The goal of boosting is to re-weight the data in order to train a set of classifiers whose errors may be uncorrelated so that when combined, the classification error rate (CER) can be reduced. We propose using discriminative training to improve the individual classifier accuracy at each iteration of the boosting algorithm. Compared to the baseline classifiers, an improvement in the CER of 41-50% was observed on call routing for a banking task. More importantly, synergistic effects of discriminative training on the boosting algorithm were demonstrated: more iterations were possible because discriminative training reduced the CER of individual classifiers trained on re-weighted data by an average of 72%.
机译:我们描述了两种不同技术的组合以改善自然语言的呼叫路由:增强训练和判别训练。增强的目标是对数据进行加权,以训练其错误可能不相关的一组分类器,以便在组合时可以降低分类错误率(CER)。我们建议在提高算法的每次迭代中使用判别训练来提高个体分类器的准确性。与基线分类器相比,银行业务的呼叫路由的CER改善了41-50%。更重要的是,证明了判别训练对Boosting算法的协同作用:由于判别训练将在重新加权数据上训练的单个分类器的CER平均降低了72%,因此可能进行更多的迭代。

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