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Learning Diverse Models: The Coulomb Structured Support Vector Machine

机译:学习多种模型:库仑结构化支持向量机

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In structured prediction, it is standard procedure to discrim-inatively train a single model that is then used to make a single prediction for each input. This practice is simple but risky in many ways. For instance, models are often designed with tractability rather than faithfulness in mind. To hedge against such model misspecification, it may be useful to train multiple models that all are a reasonable fit to the training data, but at least one of which may hopefully make more valid predictions than the single model in standard procedure. We propose the Coulomb Structured SVM (CSSVM) as a means to obtain at training time a full ensemble of different models. At test time, these models can run in parallel and independently to make diverse predictions. We demonstrate on challenging tasks from computer vision that some of these diverse predictions have significantly lower task loss than that of a single model, and improve over state-of-the-art diversity encouraging approaches.
机译:在结构化预测中,判别式训练单个模型是一种标准过程,然后将其用于对每个输入进行单个预测。这种做法很简单,但是在很多方面都有风险。例如,设计模型时通常会考虑易处理性而不是忠实于心。为了对付这种模型错误指定,训练多个都完全适合训练数据的模型可能是有用的,但是在标准程序中,至少有一个模型可以比单个模型做出更有效的预测。我们提出了库仑结构化支持向量机(CSSVM),作为在训练时获得不同模型的完整集合的一种方法。在测试时,这些模型可以并行且独立运行以做出各种预测。我们通过计算机视觉对具有挑战性的任务进行了演示,这些多样化的预测中的一些任务损失比单个模型的损失要低得多,并且相对于最新的鼓励多样性的方法有所改进。

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