首页> 外文会议>European Conference on IR Research >Curriculum Learning Strategies for IR An Empirical Study on Conversation Response Ranking
【24h】

Curriculum Learning Strategies for IR An Empirical Study on Conversation Response Ranking

机译:IR课程学习策略对谈话响应排名的实证研究

获取原文

摘要

Neural ranking models are traditionally trained on a series of random batches, sampled uniformly from the entire training set. Curriculum learning has recently been shown to improve neural models' effectiveness by sampling batches non-uniformly, going from easy to difficult instances during training. In the context of neural Information Retrieval (IR) curriculum learning has not been explored yet, and so it remains unclear (1) how to measure the difficulty of training instances and (2) how to transition from easy to difficult instances during training. To address both challenges and determine whether curriculum learning is beneficial for neural ranking models, we need large-scale datasets and a retrieval task that allows us to conduct a wide range of experiments. For this purpose, we resort to the task of conversation response ranking: ranking responses given the conversation history. In order to deal with challenge (1), we explore scoring functions to measure the difficulty of conversations based on different input spaces. To address challenge (2) we evaluate different pacing functions, which determine the velocity in which we go from easy to difficult instances. We find that, overall, by just intelligently sorting the training data (i.e., by performing curriculum learning) we can improve the retrieval effectiveness by up to 2% .
机译:神经排名模型传统上培训了一系列随机批次,从整个训练集中均匀地抽样。最近已被证明课程学习通过非统一采样批次来提高神经模型的有效性,从训练期间易于困难的情况。在神经信息的背景下,检索(IR)课程学习尚未探讨,因此它仍然不清楚(1)如何衡量培训实例的难度和(2)如何在训练期间从易于困难的情况过渡。为了解决这两种挑战并确定课程学习是否有利于神经排名模式,我们需要大规模的数据集和检索任务,使我们能够进行广泛的实验。为此目的,我们求助于对话响应排名的任务:给定谈话历史记录的排名响应。为了应对挑战(1),我们探索评分函数来衡量基于不同输入空间的对话难度。为了解决挑战(2),我们评估不同的起搏功能,从而确定我们从易于困难的情况下的速度。我们发现,通过智能地对培训数据进行智能排序(即,通过执行课程学习),我们可以将检索效率提高到2%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

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