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Emotion Analysis on Text Using Multiple Kernel Gaussian...

机译:使用多个内核高斯的文本情感分析......

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摘要

The ability to discern human emotions is critical for making chatbox behave like humans. Gaussian Process (GP) is a non-parametric Bayesian modeling and can be used to predict the presence of either a single emotion (single-task GP) or multiple emotions (multi-task GP) in natural language text. Employing multiple kernels in GP can enhance the performance of the emotion analysis tasks. The particular choice of kernel functions determines the properties such as smoothness, length scales, sharpness, and amplitude, drawn from the GP prior. Using a specific kernel may be a source of bias and can be avoided by using different kernels together. The default kernel used with GP is a Radial Basis Function (RBF). It is infinitely differentiable; GP with this function has mean square derivatives of all orders and is thus very smooth. The sharpness which occurs in the midst of the smoothness can be detected using the exponential kernel. The multi-layer perceptron kernel has greater generalization for each training example and is good for extrapolation. Our experiments show that, for learning the presence of a single emotion in a natural language sentence (single-task), multiple kernel GP with the sum of RBF and multi-layer perceptron kernels performs better than single kernel GP. Likewise, for learning the presence of several different emotions in a sentence (multi-task), multiple kernel GP with the sum of RBF, exponential and multi-layer perceptron kernels performs better than single kernel GP. Multiple Kernel Gaussian Process also outperforms Convolutional Neural Network (CNN).
机译:辨别人类情绪的能力对于制作Chatbox表现得像人类是至关重要的。高斯过程(GP)是非参数贝叶斯建模,可用于预测自然语言文本中的单一情绪(单项任务GP)或多种情绪(多任务GP)的存在。在GP中使用多个内核可以增强情绪分析任务的性能。内核函数的特定选择确定了从GP之前汲取的平滑度,长度,清晰度和幅度等性质。使用特定内核可以是偏差源,并且可以通过将不同的核在一起来避免。与GP一起使用的默认内核是径向基函数(RBF)。它是无限的微分; GP具有此功能的均为所有订单的平均衍生物,因此非常平滑。可以使用指数核来检测在平滑度中发生的锐度。多层Perceptron内核对每个训练示例具有更大的概括,并且适用于外推。我们的实验表明,为了学习在自然语言句子(单任务)中的单一情绪的存在,具有RBF和多层Perceptron内核之和的多个内核GP比单个内核GP更好地执行。同样,为了在句子(多任务)中学习几种不同情绪的存在,具有RBF,指数和多层Perceptron内核之和的多个内核GP比单个内核GP更好地执行。多个内核高斯过程优于卷积神经网络(CNN)。

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