碎片化学习难以集中记录,存在无法迅速定位到自己需要的学习内容等用户体验问题.传统方法不能采集真实情境下的用户数据,无法满足研究人员的研究需求.基于此,开发一种基于用户行为的捕捉工具——CAUX(Context-Aware User Experience,CAUX),设计了具有情境感知能力的数据采集模块,自动捕捉指定App内的用户行为数据.CAUX对用户干扰性低,可以辅助研究人员捕捉典型的碎片化学习行为.对利用CAUX采集到的数据进行处理,并结合人工方法进行分析,可以发现不同情境下的用户行为和用户体验问题. 相似文献
Reconstructing gene regulatory networks (GRNs) plays an important role in identifying the complicated regulatory relationships, uncovering regulatory patterns in cells, and gaining a systematic view for biological processes. In order to reconstruct large-scale GRNs accurately, in this paper, we first use fuzzy cognitive maps (FCMs), which are a kind of cognition fuzzy influence graphs based on fuzzy logic and neural networks, to model GRNs. Then, a novel hybrid method is proposed to reconstruct GRNs from time series expression profiles using memetic algorithm (MA) combined with neural network (NN), which is labeled as MANNFCM-GRN. In MANNFCM-GRN, the MA is used to determine regulatory connections in GRNs and the NN is used to determine the interaction strength of the regulatory connections. In the experiments, the performance of MANNFCM-GRN is validated on both synthetic data and the benchmark dataset DREAM3 and DREAM4. The experimental results demonstrate the efficacy of MANNFCM-GRN and show that MANNFCM-GRN can reconstruct GRNs with high accuracy without expert knowledge. The comparison with existing algorithms also shows that MANNFCM-GRN outperforms ant colony optimization, non-linear Hebbian learning, and real-coded genetic algorithms.