An intelligent Web agent that autonomously learns how to translate

M. Turchi, T. D. Bie, N. Cristianini
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引用次数: 5

Abstract

We describe the design of an autonomous agent that can teach itself how to translate from a foreign language, by first assembling its own training set, then using it to improve its vocabulary and language model. The key idea is that a Statistical Machine Translation package can be used for the Cross-Language Retrieval Task of assembling a training set from a vast amount of available text e.g. a large multilingual corpus, or the Web and then train on that data, repeating the process several times. The stability issues related to such a feedback loop are addressed by a mathematical model, connecting statistical and control-theoretic aspects of the system. We test it on controlled environment and real-world tasks, showing that indeed this agent can improve its translation performance autonomously and in a stable fashion, when seeded with a very small initial training set. We develop a multiprocessor version of the agent that directly accesses the Web using a Web search engine and taking advantage of the big amount of data available there. The modelling approach we develop for this agent is general, and we believe that it will be useful for an entire class of self-learning autonomous agents working on the Web.
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一个可以自主学习如何翻译的智能Web代理
我们描述了一个自主智能体的设计,它可以通过首先组装自己的训练集,然后使用它来改进它的词汇和语言模型,来自学如何从外语翻译。关键思想是统计机器翻译包可以用于跨语言检索任务,从大量可用文本(例如大型多语言语料库)或Web中组装训练集,然后在该数据上进行训练,重复该过程数次。与这种反馈回路相关的稳定性问题通过数学模型解决,将系统的统计和控制理论方面联系起来。我们在受控环境和现实世界的任务中对其进行了测试,结果表明,当使用非常小的初始训练集进行播种时,该智能体确实可以自主地以稳定的方式提高其翻译性能。我们开发了代理的多处理器版本,它使用Web搜索引擎直接访问Web,并利用那里的大量可用数据。我们为这个代理开发的建模方法是通用的,我们相信它将对在Web上工作的整个自主学习代理类有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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