我们引入了翻译误差校正(TEC),这是自动校正人类生成的翻译的任务。机器翻译(MT)的瑕疵具有长期的动机系统,可以通过自动编辑后改善变化后的转换。相比之下,尽管人类直觉上犯了不同的错误,但很少有人注意自动纠正人类翻译的问题,从错别字到翻译约定的矛盾之处。为了调查这一点,我们使用三个TEC数据集构建和释放ACED语料库。我们表明,与自动后编辑数据集中的MT错误相比,TEC中的人类错误表现出更加多样化的错误,翻译流利性误差要少得多,这表明需要专门用于纠正人类错误的专用TEC模型。我们表明,基于人类错误的合成错误的预训练可将TEC F-SCORE提高多达5.1点。我们通过九名专业翻译编辑进行了人类的用户研究,发现我们的TEC系统的帮助使他们产生了更高质量的修订翻译。
translated by 谷歌翻译
Recent diffusion-based AI art platforms are able to create impressive images from simple text descriptions. This makes them powerful tools for concept design in any discipline that requires creativity in visual design tasks. This is also true for early stages of architectural design with multiple stages of ideation, sketching and modelling. In this paper, we investigate how applicable diffusion-based models already are to these tasks. We research the applicability of the platforms Midjourney, DALL-E 2 and StableDiffusion to a series of common use cases in architectural design to determine which are already solvable or might soon be. We also analyze how they are already being used by analyzing a data set of 40 million Midjourney queries with NLP methods to extract common usage patterns. With this insights we derived a workflow to interior and exterior design that combines the strengths of the individual platforms.
translated by 谷歌翻译