Social companionship means the ability of conversational agents to build emotional connections and ongoing relationships with users. Unlike old automated systems that only give simple facts or instructions, these agents talk to users more naturally, like people do. This can bring comfort, reassurance, and a feeling that someone is there during stressful healthcare moments such as setting appointments or checking symptoms.
Social companionship helps patients trust and open up more to AI systems. This can lead to better healthcare results by helping patients follow treatment plans, keep appointments, and feel more satisfied overall. For medical practice managers and healthcare IT staff, this offers a new way to improve patient contact, especially over phone services in the front office.
Antecedents are basic factors that start the process of social companionship between users and conversational agents. In healthcare, these include:
These factors work together to build better social companionship, which is important in healthcare where patients may feel anxious and have special communication needs.
Mediators explain how the initial connection from antecedents leads to important results. They are mental or social processes that affect the link between user and agent. Examples include:
Healthcare managers should understand these mediators because they affect patient satisfaction and loyalty. IT staff can use this knowledge to make AI chatbots work better for patients.
Moderators are things that affect when and how well social companionship works. They explain why some patients respond better to AI companions than others. Important moderators include:
Knowing these moderators helps healthcare groups adjust their AI agents’ style, complexity, and tone to better meet patient needs.
Healthcare administrators and IT managers see both benefits and challenges with social companionship in conversational agents. Good patient communication is key. A noisy or confusing phone system frustrates both patients and staff. AI-powered front-office phone automation, like that from Simbo AI, offers a way to automate common tasks while keeping kind and natural conversations.
These systems can answer calls, book appointments, renew prescriptions, and handle basic triage tasks without people needing to step in. This frees staff for more difficult cases. With affective computing, agents can spot upset or confused callers and pass them to humans when needed. This helps work run better and patients feel better cared for.
Simbo AI uses research on antecedents, mediators, and moderators to build agents that meet real patient needs. By focusing on social presence and emotional connections, they lower caller frustration and cut phone wait times. This is important in busy U.S. medical offices. For practice owners, this means keeping patients and improving their reputation without extra costs.
Healthcare front offices in the United States are using automation more and more because it helps work run smoother and patients be happier. AI systems take care of boring and repeated tasks while still talking in a way that feels human thanks to conversational agents.
Using Simbo AI’s platform, healthcare groups can:
Using AI this way not only helps with work but also makes patient care better by meeting emotional and social needs through the agents’ social companionship.
Research by scholars like Rijul Chaturvedi, Sanjeev Verma, Ronnie Das, and Yogesh K. Dwivedi shows the need for continued work to make AI companions in healthcare better and fairer. Their work points to future research areas that matter to providers and managers in the U.S.:
As more healthcare places use conversational AI, following these ideas will help make the technology work well and respect patient experiences.
Medical practice managers, owners, and IT staff in the United States can greatly benefit from using a clear framework that separates antecedents, mediators, and moderators in social companionship with conversational agents. This helps in successfully using AI front-office systems like Simbo AI, which cut down admin work and improve patient engagement with socially companionable AI.
By focusing on emotional parts of healthcare talk and adjusting AI to fit individual and situation needs, U.S. medical offices can make patient experience better, lower missed calls and no-shows, and boost work speed. As research continues on social companionship and AI ethics, healthcare providers who watch these areas will be ready to give better care while managing their work well.
Social companionship in conversational agents refers to the feature enabling emotional bonding and consumer relationships through interaction, enhancing user engagement and satisfaction.
The field shows exponential growth with fragmented findings across disciplines, limiting holistic understanding. A comprehensive review is needed to map science performance and intellectual structures, guiding future research and practical design.
The study employed systematic literature review, science mapping, intellectual structure mapping, thematic, and content analysis to develop a conceptual framework for SC with conversational agents.
It encompasses antecedents, mediators, moderators, and consequences of social companionship with conversational agents, offering a detailed structure for understanding and further research.
The study identifies five main research streams, though specifics were not detailed in the extracted text; these likely cover emotional AI, anthropomorphism, social presence, affective computing, and ethical AI companions.
The study suggests future avenues focused on designing efficient, ethical AI companions, emphasizing emotional bonding, user experience, and integrating multidisciplinary insights.
Antecedents initiate social companionship, mediators influence the strength or quality of interaction, and moderators affect the conditions or context under which companionship outcomes occur.
Anthropomorphism, attributing human-like qualities to AI agents, enhances social presence and emotional bonding, crucial elements in social companionship.
Affective computing enables AI agents to recognize and respond to user emotions, improving empathy, engagement, and personalized healthcare interactions.
It provides a comprehensive conceptual framework and future research guidance to develop efficient, ethical conversational AI agents that foster authentic social companionship and improve user outcomes.