通过促进任务专门化改进多任务检索

IF 4.2 1区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Wenzheng Zhang, Chenyan Xiong, Karl Stratos, Arnold Overwijk
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引用次数: 0

摘要

摘要在多任务检索中,训练单个检索器检索多个任务的相关上下文。尽管朴素多任务检索具有实际的吸引力,但它落后于特定任务检索,即为每个任务训练单独的检索器。我们表明,通过促进任务专门化,训练多任务寻回犬超越特定任务寻回犬是可能的。其主要成分是:(1)更好地选择预训练模型——明确针对多任务进行优化的模型——以及兼容的提示;(2)一种新颖的自适应学习方法,鼓励每个参数专门用于特定任务。得到的多任务检索器在KILT基准测试中表现优异。经过分析,我们发现该模型确实学习了比朴素多任务更任务专门化的参数,而没有提示或自适应学习
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Multitask Retrieval by Promoting Task Specialization
Abstract In multitask retrieval, a single retriever is trained to retrieve relevant contexts for multiple tasks. Despite its practical appeal, naive multitask retrieval lags behind task-specific retrieval, in which a separate retriever is trained for each task. We show that it is possible to train a multitask retriever that outperforms task-specific retrievers by promoting task specialization. The main ingredients are: (1) a better choice of pretrained model—one that is explicitly optimized for multitasking—along with compatible prompting, and (2) a novel adaptive learning method that encourages each parameter to specialize in a particular task. The resulting multitask retriever is highly performant on the KILT benchmark. Upon analysis, we find that the model indeed learns parameters that are more task-specialized compared to naive multitasking without prompting or adaptive learning.1
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来源期刊
CiteScore
32.60
自引率
4.60%
发文量
58
审稿时长
8 weeks
期刊介绍: The highly regarded quarterly journal Computational Linguistics has a companion journal called Transactions of the Association for Computational Linguistics. This open access journal publishes articles in all areas of natural language processing and is an important resource for academic and industry computational linguists, natural language processing experts, artificial intelligence and machine learning investigators, cognitive scientists, speech specialists, as well as linguists and philosophers. The journal disseminates work of vital relevance to these professionals on an annual basis.
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