首页> 外国专利> USING A MULTI-TASK-TRAINED NEURAL NETWORK TO GUIDE INTERACTION WITH A QUERY-PROCESSING SYSTEM VIA USEFUL SUGGESTIONS

USING A MULTI-TASK-TRAINED NEURAL NETWORK TO GUIDE INTERACTION WITH A QUERY-PROCESSING SYSTEM VIA USEFUL SUGGESTIONS

机译:使用多任务训练的神经网络通过有用的建议指导与查询处理系统的交互

摘要

A computer-implemented technique is described herein for assisting a user in advancing a task objective. The technique uses a suggestion-generating system (SGS) to provide one or more suggestions to a user in response to at least a last-submitted query provided by the user. The SGS may correspond to a classification-type or generative-type neural network. The SGS uses a machine-trained model that is trained using a multi-task training framework based on plural groups of training examples, which, in turn, are produced using different respective example-generating methods. One such example-generating method constructs a training example from queries in a search session. It operates by identifying the task-related intent the queries, and then identifying at least one sequence of queries in the search session that exhibits a coherent task-related intent. A training example is constructed based on queries in such a sequence.
机译:这里描述了一种计算机实现的技术,用于辅助用户推进任务目标。 该技术使用建议生成系统(SGS)来向用户提供一个或多个建议,响应于用户提供的至少最后提交的查询。 SGS可以对应于分类类型或生成类型的神经网络。 SGS使用机器训练模型,该模型使用基于多个训练示例的多任务训练框架训练,否则使用不同的各个示例生成方法产生。 一种这样的示例生成方法构造来自搜索会话中查询的训练示例。 它通过识别与查询相关的任务相关的意图来操作,然后在搜索会话中识别呈现相干任务相关的意图的至少一个查询序列。 基于这样的序列的查询构建训练示例。

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