1D-Touch:通过半直接手势的nlp辅助粗文本选择

Q1 Social Sciences
Jiang, Peiling, Feng, Li, Sun, Fuling, Sarkar, Parakrant, Xia, Haijun, Liu, Can
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引用次数: 0

摘要

现有的触摸屏文本选择技术侧重于改进对插入符号移动的控制。除了抓取单词和实体识别之外,单词和短语级别的粗粒度文本选择还没有得到太多支持。我们引入了一种新的文本选择方法1D-Touch,它通过促进单词及以上语义单位的选择来补充基于插入符号的子词选择。这种方法使用一个简单的垂直滑动手势来扩展和收缩单词的选择区域。扩展可以通过单词或从子短语到句子的语义块进行。该技术将文本选择的概念从通过定位首末词来定义范围转变为文本语义实体的扩展和收缩的动态过程。为了理解我们的方法的效果,我们原型化并测试了两个变体:WordTouch和ChunkTouch,前者提供了一个直接的逐字扩展,后者利用自然语言处理将文本分成语法单元,允许根据滑动手势的响应,根据语义上有意义的单元来增加选择。我们的评估主要集中在1D-Touch处理的粗粒度选择任务上,结果显示,与Android上默认的抓字选择方法相比,它提高了20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
1D-Touch: NLP-Assisted Coarse Text Selection via a Semi-Direct Gesture
Existing text selection techniques on touchscreen focus on improving the control for moving the carets. Coarse-grained text selection on word and phrase levels has not received much support beyond word-snapping and entity recognition. We introduce 1D-Touch, a novel text selection method that complements the carets-based sub-word selection by facilitating the selection of semantic units of words and above. This method employs a simple vertical slide gesture to expand and contract a selection area from a word. The expansion can be by words or by semantic chunks ranging from sub-phrases to sentences. This technique shifts the concept of text selection, from defining a range by locating the first and last words, towards a dynamic process of expanding and contracting a textual semantic entity. To understand the effects of our approach, we prototyped and tested two variants: WordTouch, which offers a straightforward word-by-word expansion, and ChunkTouch, which leverages NLP to chunk text into syntactic units, allowing the selection to grow by semantically meaningful units in response to the sliding gesture. Our evaluation, focused on the coarse-grained selection tasks handled by 1D-Touch, shows a 20% improvement over the default word-snapping selection method on Android.
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来源期刊
Proceedings of the ACM on Human-Computer Interaction
Proceedings of the ACM on Human-Computer Interaction Social Sciences-Social Sciences (miscellaneous)
CiteScore
5.90
自引率
0.00%
发文量
257
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