The Impact of Natural Language Processing on Communication and Collaboration in U.S. Mobile Device Manufacturing
Keywords:
Natural Language Processing, Mobile Device ManufacturingAbstract
Mobile devices, including smartphones and tablets, have become an integral part of modern life. They have transformed the way people communicate, connect, collaborate, and create since their introduction in the 1990s. Mobile devices have contributed to more active participation in daily life, such as social interactions, content creation, and online transactions, but have also led to more passive behaviors, like social media lurking and shorter attention spans. Despite influencing communication channels and behavior patterns, there has been limited investigation into their effects on language communication and overall communication competence.
For mobile devices, text-based instant messaging, particularly through short message service (SMS) and social media platforms, has become a dominant form of communication. It has altered the pace of conversations, language variety, and perception of personal interactions. Mobile devices are designed as multipurpose media with alternative communication tools, including voice and video calls, active verbal communication, and synchronous voice communication. The interplay between text-based and alternative verbal forms of language interaction in mobile devices has only recently been examined and is still limited.
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References
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