generate dialogue
What if Red Can Talk? Dynamic Dialogue Generation Using Large Language Models
Nananukul, Navapat, Wongkamjan, Wichayaporn
Role-playing games (RPGs) provide players with a rich, interactive world to explore. Dialogue serves as the primary means of communication between developers and players, manifesting in various forms such as guides, NPC interactions, and storytelling. While most games rely on written scripts to define the main story and character personalities, player immersion can be significantly enhanced through casual interactions between characters. With the advent of large language models (LLMs), we introduce a dialogue filler framework that utilizes LLMs enhanced by knowledge graphs to generate dynamic and contextually appropriate character interactions. We test this framework within the environments of Final Fantasy VII Remake and Pokemon, providing qualitative and quantitative evidence that demonstrates GPT-4's capability to act with defined personalities and generate dialogue. However, some flaws remain, such as GPT-4 being overly positive or more subtle personalities, such as maturity, tend to be of lower quality compared to more overt traits like timidity. This study aims to assist developers in crafting more nuanced filler dialogues, thereby enriching player immersion and enhancing the overall RPG experience.
Has artificial intelligence (AI) come alive like in sci-fi movies? This Google engineer thinks so
If you have ever interacted with a chatbot you know we're still years away from those things convincing you that you are chatting with a real human. That's no surprise as many chatbots do not actually use machine learning to converse more naturally. Instead only completing scripted actions based on keywords. A good chatbot that truly utilises machine learning can fool you into thinking that you're talking to a human. In fact, a program from 1965 fooled people into thinking that it was a human.
Amazon Tests AI Chatbots That Generate Dialogue on the Fly
The retail giant said today that it will deploy the generative chatbot as an aid to human agents for the time being but plans to eventually have it deal with customers directly. The company is also rolling out a separate consumer-facing chatbot that uses a neural network to better match human-authored response templates to customer queries. The project marks one of the first commercial tests of a state-of-the-art new natural language processing technology that researchers think has the potential to supercharge progress in the field. The model, which has also powered cutting-edge systems like OpenAI's GPT-2, draws on massive training datasets and predictive text to generate realistic-sounding copy or dialogue. "It is difficult to determine what types of conversational models other customer service systems are running, but we are unaware of any announced deployments of end-to-end, neural-network-based dialogue models like ours," wrote Jared Kramer, an applied-science manager on Amazon's Customer Service Tech team, in a blog post. Despite these advances in machine learning, most chatbots on the market today still run on automation rather than true AI.