{"title":"Describing Gender Equality in French Audiovisual Streams with a Deep Learning Approach","authors":"D. Doukhan, G. Poels, Zohra Rezgui, J. Carrive","doi":"10.18146/2213-0969.2018.jethc156","DOIUrl":null,"url":null,"abstract":"A large-scale description of men and women speaking-time in media is presented, based on the analysis of about 700.000 hours of French audiovisual documents, broadcasted from 2001 to 2018 on 22 TV channels and 21 radio stations. Speaking-time is described using Women Speaking Time Percentage (WSTP), which is estimated using automatic speaker gender detection algorithms, based on acoustic machine learning models. WSTP variations are presented across channels, years, hours, and regions. Results show that men speak twice as much as women on TV and on radio in 2018, and that they used to speak three times longer than women in 2004. We also show only one radio station out of the 43 channels considered is associated to a WSTP larger than 50%. Lastly, we show that WSTP is lower during high-audience time-slots on private channels. This work constitutes a massive gender equality study based on the automatic analysis of audiovisual material and offers concrete perspectives for monitoring gender equality in media.The software used for the analysis has been released in open-source, and the detailed results obtained have been released in open-data.","PeriodicalId":269127,"journal":{"name":"Audiovisual Data in Digital Humanities","volume":"41 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2018-12-31","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"8","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Audiovisual Data in Digital Humanities","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.18146/2213-0969.2018.jethc156","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 8
Abstract
A large-scale description of men and women speaking-time in media is presented, based on the analysis of about 700.000 hours of French audiovisual documents, broadcasted from 2001 to 2018 on 22 TV channels and 21 radio stations. Speaking-time is described using Women Speaking Time Percentage (WSTP), which is estimated using automatic speaker gender detection algorithms, based on acoustic machine learning models. WSTP variations are presented across channels, years, hours, and regions. Results show that men speak twice as much as women on TV and on radio in 2018, and that they used to speak three times longer than women in 2004. We also show only one radio station out of the 43 channels considered is associated to a WSTP larger than 50%. Lastly, we show that WSTP is lower during high-audience time-slots on private channels. This work constitutes a massive gender equality study based on the automatic analysis of audiovisual material and offers concrete perspectives for monitoring gender equality in media.The software used for the analysis has been released in open-source, and the detailed results obtained have been released in open-data.
本文通过对2001年至2018年在22个电视频道和21个广播电台播出的约70万小时法国视听文件的分析,对男性和女性在媒体上的讲话时间进行了大规模描述。说话时间使用女性说话时间百分比(Women Speaking Time Percentage, WSTP)来描述,WSTP使用基于声学机器学习模型的自动说话者性别检测算法来估计。WSTP的变化呈现在不同的频道、年份、时间和地区。结果显示,2018年,男性在电视和广播上的讲话时间是女性的两倍,而在2004年,男性的讲话时间是女性的三倍。我们还显示,在考虑的43个频道中,只有一个广播电台与WSTP大于50%相关联。最后,我们发现在私有频道的高观众时段,WSTP较低。这项工作构成了一项基于视听材料自动分析的大规模性别平等研究,并为监测媒体中的性别平等提供了具体的视角。用于分析的软件已经开源发布,得到的详细结果已经以开放数据的形式发布。