Patchview: LLM-powered Worldbuilding with Generative Dust and Magnet Visualization DOI
John Joon Young Chung, Max Kreminski

Published: Oct. 11, 2024

Large language models (LLMs) can help writers build story worlds by generating world elements, such as factions, characters, and locations. However, making sense of many generated elements be overwhelming. Moreover, if the user wants to precisely control aspects that are difficult specify verbally, prompting alone may insufficient. We introduce Patchview, a customizable LLM-powered system visually aids worldbuilding allowing users interact with concepts through physical metaphor magnets dust. Elements in Patchview dragged closer high relevance, facilitating sensemaking. The also steer generation verbally elusive indicating desired position element between concepts. When disagrees LLM's visualization generation, they correct those repositioning element. These corrections used align future behaviors user's perception. With study, we show supports sensemaking steering exploration during process. provides insights on how visual representation sensemake, steer, generative AI model intentions.

Language: Английский

Visionarium, June 2024, Full Issue DOI Open Access
James Hutson,

Chris Mayer,

Kathi Vosevich

et al.

Deleted Journal, Journal Year: 2024, Volume and Issue: 2(1)

Published: June 3, 2024

addresses the intricate dynamics of Human-AI Symbiosis in higher education.This edition focuses on ethical, skill-based, and philosophical implications Generative Artificial Intelligence as it integrates with human capabilities within educational frameworks.The issue draws Dov Seidman's philosophy that "how we do things matters more than what do," therefore, manner which accomplish activities is greater significance themselves.The articles this not merely speculate potential AI education; they provide a deep dive into necessary ethical frameworks, underscore irreplaceable value skills, consider challenges posed by technological integration.Articles explore various themes, emphasizing critical nature skills such empathy, judgment, nuanced understanding, are deemed indispensable even an AI-driven landscape.Furthermore, examines concept 'Fearing Other', analyzing how might either perpetuate or alleviate deeply ingrained biases fears environments.Insights uses to develop power like creativity, leadership, teamwork also discussed, highlighting their importance rapidly evolving sector.This presents range interdisciplinary perspectives, shedding light AI's diverse impacts across different academic disciplines.It existing paradigms encourages reevaluation boundaries between creativity algorithmic precision.Readers invited critically engage content, reflecting broader for future education AI-enhanced world.The community encouraged navigate new terrain knowledge, guided considerations, inspired boundless possibilities collaboration artificial intelligence.In synthesizing these aims contribute discourse impact practical implementations settings globally.As move forward, insights from should inform ongoing dialogues initiatives, ensuring enhances outcomes while preserving essential interactions underpin effective learning environments.The commitment continuous inquiry consideration pivotal collectively AI-augmented reality.This journey promises transform landscapes adhering values define our humanity.The first paper Col. Mayer special need institutions maintain balance cultivating enhancing literacy.Amidst landscape increasingly influenced intelligence, emphasis remains continuing thinking, 1 et al.

Language: Английский

Citations

0

Amplifying the Anomaly: How Humans Choose Unproven Options and Large Language Models Avoid Them DOI
Anthony Brandt

Creativity Research Journal, Journal Year: 2024, Volume and Issue: unknown, P. 1 - 22

Published: June 17, 2024

Both large language models (LLMs) and the human brain develop internal of reality to make accurate predictions. typically prefer choices with strongest track records. However, when faced a creative challenge, LLMs remain committed high-probability options while humans can opt for unproven ones. This paper delves into one way making unlikely events plausible—"amplifying anomaly." The concept involves extrapolating viable consequences from an proposition. Rather than being treated as oddball or "one-offs," anomaly permeates work. Notably, novelty appropriateness be in tension each other, high utility coming at cost low novelty. Amplifying aligns these competing demands. It enhances originality: rarer proposition more thoroughly it is worked out, unique surprising result. At same time, effectiveness value option also rises: thorough elaboration product establishes its fitness. Musical examples by Beethoven, Schubert, contemporary composer Sky Macklay, along products other domains, illustrate this principle. Classic have several limitations that difficult amplify anomaly: they are steered toward norm-driven outcomes, short-term decisions, not designed self-evaluate. As result, difficulty developing unusual propositions non-obvious without guidance. Alternatives approaches, including adversarial networks team AI, briefly examined. Implications future computational creativity discussed.

Language: Английский

Citations

0

Navigating the future of B2B marketing: The transformative impact of the industrial metaverse DOI Creative Commons
Boas Bamberger, Werner Reinartz, Wolfgang Ulaga

et al.

Journal of Business Research, Journal Year: 2024, Volume and Issue: 188, P. 115057 - 115057

Published: Nov. 22, 2024

Language: Английский

Citations

0

Patchview: LLM-powered Worldbuilding with Generative Dust and Magnet Visualization DOI
John Joon Young Chung, Max Kreminski

Published: Oct. 11, 2024

Large language models (LLMs) can help writers build story worlds by generating world elements, such as factions, characters, and locations. However, making sense of many generated elements be overwhelming. Moreover, if the user wants to precisely control aspects that are difficult specify verbally, prompting alone may insufficient. We introduce Patchview, a customizable LLM-powered system visually aids worldbuilding allowing users interact with concepts through physical metaphor magnets dust. Elements in Patchview dragged closer high relevance, facilitating sensemaking. The also steer generation verbally elusive indicating desired position element between concepts. When disagrees LLM's visualization generation, they correct those repositioning element. These corrections used align future behaviors user's perception. With study, we show supports sensemaking steering exploration during process. provides insights on how visual representation sensemake, steer, generative AI model intentions.

Language: Английский

Citations

0