首页> 外国专利> BiLSTM-SIAMESE NETWORK BASED CLASSIFIER FOR IDENTIFYING TARGET CLASS OF QUERIES AND PROVIDING RESPONSES THEREOF

BiLSTM-SIAMESE NETWORK BASED CLASSIFIER FOR IDENTIFYING TARGET CLASS OF QUERIES AND PROVIDING RESPONSES THEREOF

机译:基于BiLSTM-SIAMESE网络的分类器,用于识别查询的目标类别并提供相应的响应

摘要

#$%^&*AU2018201670B220200326.pdf#####ABSTRACT Organizations are constantly flooded with questions, ranging from mundane to the unanswerable. It is therefore respective department that actively looks for automated assistance, especially to alleviate the burden of routine, but time-consuming tasks. The embodiments of the present disclosure provide BiLSTM-Siamese Network based Classifier for identifying target class of queries and providing responses to queries pertaining to the identified target class, which acts as an automated assistant that alleviates burden of answering queries in welldefined domains. Siamese Model (SM) is trained for a epochs, and then the same Base-Network is used to train Classification Model (CM) for b epochs iteratively until best accuracy is observed on validation test, wherein SM ensures it learns which sentences are similar/dissimilar semantically while CM learns to predict target class of every user query. Here a and b are assumed to be hyper parameters and are tuned for best performance on the validation set.
机译:#$%^&* AU2018201670B220200326.pdf #####抽象组织不断充斥着各种问题,从平凡无奇。因此,正是各个部门积极寻求自动协助,尤其是减轻日常工作的负担,但是费时的任务。本公开的实施例提供基于BiLSTM-Siamese网络的分类器,用于识别查询的目标类别并提供对与确定的目标类别有关的查询的响应,充当自动助手,减轻了很好地回答查询的负担定义的域。对暹罗模型(SM)进行训练,然后再进行相同的训练基本网络用于迭代训练b时期的分类模型(CM)直到在验证测试中观察到最佳准确性为止,其中SM确保其学习CM学习预测哪些句子在语义上相似/相异每个用户查询的目标类别。这里假设a和b是超参数并针对验证集进行了调整,以实现最佳性能。

著录项

相似文献

  • 专利
  • 外文文献
  • 中文文献
获取专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号