Addressing the selection bias in voice assistance: training voice assistance model in python with equal data selection

Piya Kashav
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Abstract

In recent times, voice assistants have become a part of our day-to-day lives, allowing information retrieval by voice synthesis, voice recognition, and natural language processing. These voice assistants can be found in many modern-day devices such as Apple, Amazon, Google, and Samsung. This project is primarily focused on Virtual Assistance in Natural Language Processing. Natural Language Processing is a form of AI that helps machines understand people and create feedback loops. This project will use deep learning to create a Voice Recognizer and use Commonvoice and data collected from the local community for model training using Google Colaboratory. After recognizing a command, the AI assistant will be able to perform the most suitable actions and then give a response. The motivation for this project comes from the race and gender bias that exists in many virtual assistants. The computer industry is primarily dominated by the male gender, and because of this, many of the products produced do not regard women. This bias has an impact on natural language processing. This project will be utilizing various open-source projects to implement machine learning algorithms and train the assistant algorithm to recognize different types of voices, accents, and dialects. Through this project, the goal to use voice data from underrepresented groups to build a voice assistant that can recognize voices regardless of gender, race, or accent. Increasing the representation of women in the computer industry is important for the future of the industry. By representing women in the initial study of voice assistants, it can be shown that females play a vital role in the development of this technology. In line with related work, this project will use first-hand data from the college population and middle-aged adults to train voice assistant to combat gender bias.
解决语音辅助中的选择偏差:用python训练具有相等数据选择的语音辅助模型
近年来,语音助手已经成为我们日常生活的一部分,它可以通过语音合成、语音识别和自然语言处理来检索信息。这些语音助手可以在许多现代设备中找到,比如苹果、亚马逊、b谷歌和三星。该项目主要关注自然语言处理中的虚拟辅助。自然语言处理是人工智能的一种形式,可以帮助机器理解人类并创建反馈循环。该项目将使用深度学习来创建一个语音识别器,并使用Commonvoice和从当地社区收集的数据使用谷歌协作进行模型训练。在识别命令后,人工智能助手将能够执行最合适的动作,然后给出响应。这个项目的动机来自于许多虚拟助手中存在的种族和性别偏见。计算机行业主要由男性主导,正因为如此,许多产品都没有考虑到女性。这种偏见对自然语言处理有影响。这个项目将利用各种开源项目来实现机器学习算法,并训练助手算法来识别不同类型的声音、口音和方言。通过这个项目,我们的目标是使用来自弱势群体的语音数据来建立一个语音助手,可以识别声音,而不考虑性别、种族或口音。增加女性在计算机行业的代表性对该行业的未来很重要。通过在语音助手的初步研究中代表女性,可以看出女性在这项技术的发展中起着至关重要的作用。结合相关工作,本项目将利用大学生人群和中年人的第一手数据,对语音助手进行培训,以对抗性别偏见。
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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