Gender and Intent Classification From Finger Swiping Behaviours on Gesture Keyboards Using LSTM

Ryan Adipradana, Bernard Wijaya, Winston Rusli, Henry Lucky, Derwin Suhartono
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引用次数: 1

Abstract

With the increasing number of smartphone users worldwide, gender prediction research has shifted from using keyboard strokes to touch behaviour from smartphone. One of the touching behaviours is swiping behaviour from gesture keyboard. The goal of this research was to produce a classification result for gender and intent (Quickly, Accurately, Creatively) by utilizing finger swiping behaviors on gesture keyboards. Research methods were conducted by data development, data training, data testing and performance evaluation. Long Short-Term Memory (LSTM) recurrent neural network architecture served as the main structure for data training. Evaluation used cross validation method with performance evaluation metrics (F1 score and Area Under Curve (AUC)). The highest result of gender classification is 0.88 F1 score and 0.84 AUC for male and 0.83 F1 score and 0.85 AUC for female. As for intent classification it is 0.76 F1 Score and 0.91 AUC. It can be concluded that gender and intent can be classified using LSTM architecture from finger swiping behaviors.
基于LSTM的手势键盘手指滑动行为的性别和意图分类
随着全球智能手机用户数量的不断增加,性别预测研究已经从使用键盘敲击转向使用智能手机的触摸行为。触摸行为之一是手势键盘上的滑动行为。本研究的目的是通过使用手势键盘上的手指滑动行为来产生性别和意图(快速,准确,创造性)的分类结果。研究方法通过数据开发、数据训练、数据测试和性能评估进行。长短期记忆(LSTM)递归神经网络结构作为数据训练的主要结构。评价采用交叉验证法与性能评价指标(F1分数和曲线下面积(AUC))。性别分类的最高结果男性为0.88 F1分、0.84 AUC,女性为0.83 F1分、0.85 AUC。在意图分类方面,F1得分为0.76,AUC为0.91。可以得出结论,使用LSTM架构可以从手指滑动行为中分类出性别和意图。
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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