The ability to estimate current affective statuses of web users has considerable potential towards the realization of user-centric opportune services. However, determining the type of data to be used for such estimation as well as collecting the ground truth of such affective statuses are difficult in the real world situation. We propose a novel way of such estimation based on a combinational use of user's web search queries and mobile sensor data. Our large-scale data analysis with about 11,000,000 users and 100 recent advertisement log revealed (1) the existence of certain class of advertisement to which mood-status-based delivery would be significantly effective, (2) that our "National Mood Score" shows the ups and downs of people's moods in COVID-19 pandemic that inversely correlated to the number of patients, as well as the weekly mood rhythm of people.
翻译:然而,在现实世界形势下,很难确定用于这种估计的数据类型,也难以收集这种情感状态的实地真相。我们提出一种新的估计方法,其依据是结合使用用户的网络搜索查询和移动感官数据。我们用大约11,000,000用户和100个最近的广告日志进行的大规模数据分析表明:(1) 存在某些类别的广告,而根据情绪状态传送的广告将非常有效,(2) 我们的“全国摩德分”显示了人们在COVID-19流行病中的情绪起伏,而这种情绪与病人人数以及人们每周的情绪节奏反比。