Exploring the direction of the English translation of environmental protection articles based on the robot cognitive- emotional interaction model

Shuai Song
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Abstract

To broaden the application area of the cognitive-emotional interaction model for robots. In this paper, an algorithmic model for the English translation of environmental articles based on a cognitive-emotional interaction model for robots is used to model the process of emotion generation using reinforcement learning. Similarly, positivity and empathy are used to quantify the reward function for emotional state assessment, and the optimal emotional strategy selection is derived based on the utility function. In the process of article translation by the robot, Lagrangian factors are introduced to make the translation probability maximum process transformed into the process of obtaining the highest value of the auxiliary function at a random state. Finally, the effectiveness of the robot's cognitive-emotional interaction model in the English translation of environmental protection articles is verified by the Chinese-English parallel question-and-answer dataset. The experimental results demonstrate that this model can not only be used for the English translation of environmental protection articles but also can give the corresponding English translation work similar to human emotions, which can better help people understand the meaning of English. It also provides a basis and direction for the subsequent in-depth application of the robot cognitive-emotional interaction model in various fields.
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基于机器人认知-情感交互模型的环保文章英文翻译方向探索
拓宽机器人认知-情感交互模型的应用领域。本文采用基于机器人认知-情感交互模型的环境类文章英文翻译算法模型,通过强化学习对情感生成过程进行建模。同样,利用正性和共情来量化情绪状态评估的奖励函数,并基于效用函数推导出最优情绪策略选择。在机器人翻译文章的过程中,引入拉格朗日因子,将翻译概率最大化过程转化为在随机状态下获取辅助函数最大值的过程。最后,通过汉英平行问答数据集验证了机器人认知-情感交互模型在环保文章英译中的有效性。实验结果表明,该模型不仅可以用于环保文章的英文翻译,而且可以给出与人类情感相似的相应的英文翻译工作,可以更好地帮助人们理解英语的意思。也为后续机器人认知-情感交互模型在各个领域的深入应用提供了基础和方向。
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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