ASE2022
Identification and Mitigation of Gender Biases to Promote Diversity and Inclusion among Open Source Communities
Sayma Sultana
被引用 2 次
摘要
Contemporary software development organizations are dominated by straight males and lack diversity. As a result, people from other demographic such as women and LGBTQ+ often encounter bias, sexism, and misogyny. Due to negative experiences, many women switch careers. Therefore, biases pose barriers to promote diversity and inclusion. To get benefits from diverse pools of talents and reduce the attrition rate of minorities, we need to identify the degree and effect of various biases and develop mitigation strategies. Therefore, my dissertation study aims at promoting diversity and inclusion among software development organizations by identifying the manifestation, magnitude, and frequency of various gender biases. For this purpose, I plan to investigate i) the effect of gender of the contributors in the code review process of Free/Libre Open Source Software (FLOSS) projects, ii) the frequency of different dimensions of gender bias and their effect, and iii) develop a tool to identify sexist and misogynistic and derogatory (SMD) texts.