Text-based simulated environments have proven to be a valid testbed for machine learning approaches. The process of affordance extraction can be used to generate possible actions for interaction within such an environment. In this paper the capabilities and challenges for utilizing external knowledge databases (in particular ConceptNet) in the process of affordance extraction are studied. An algorithm for automated affordance extraction is introduced and evaluated on the Interactive Fiction (IF) platforms TextWorld and Jericho. For this purpose, the collected affordances are translated into text commands for IF agents. To probe the quality of the automated evaluation process, an additional human baseline study is conducted. The paper illustrates that, despite some challenges, external databases can in principle be used for affordance extraction. The paper concludes with recommendations for further modification and improvement of the process.
翻译:事实证明,基于文字的模拟环境是机器学习方法的有效测试台,可使用发价提取过程来产生在这种环境中进行互动的可能行动,本文件研究了在发价提取过程中利用外部知识数据库(特别是概念网)的能力和挑战,在互动纤维平台TextWorld和Jerich上引入了自动发价提取算法并进行了评价,为此,将收集的发价转换为综合框架代理人的文本指令,为调查自动评估过程的质量,还进行了额外的人类基线研究,该文件表明,尽管存在一些挑战,但外部数据库原则上可用于发价提取,文件最后提出了进一步修改和改进流程的建议。