Recent advances in neural networks have been successfully applied to many tasks in online recommendation applications. We propose a new framework called cone latent mixture model which makes use of hand-crafted state being able to factor distinct dependencies among multiple related documents. Specifically, it uses discriminative optimization techniques in order to generate effective multi-level knowledge bases, and uses online discriminative learning techniques in order to leverage these features. And for this joint model which uses confidence estimates for each topic and is able to learn a discriminatively trained jointly to automatically extracted salient features where discriminative training is only uses features and then is able to accurately trained.
翻译:神经网络最近的进展已成功地应用于在线建议应用程序中的许多任务。 我们提出了一个称为锥形潜伏混合物模型的新框架,利用手工艺状态能够将多种相关文件的不同依赖性考虑在内。 具体地说,它使用歧视性优化技术,以产生有效的多层次知识库,并使用在线歧视性学习技术来利用这些特征。 对于这一联合模型,它利用每个专题的信任估计值,并能够学习经过歧视性联合培训的自动提取特征,在这些特征中,歧视性培训只是一些功能,然后能够准确培训。