Option B: Fact-Checked Outputs
2. Pragmatism
Pragmatism
Yet, as she considered this cautious, fact-focused approach, Emma found herself questioning its potential limitations, especially when she recalled the ideas of William James, a leading figure in the Pragmatist movement. For James, truth wasn’t a fixed, objective ideal but rather a practical tool. In James’s view, a statement or belief was “true” if it helped people effectively navigate the world, solve problems, or achieve their goals. Instead of focusing on accuracy alone, James valued truth for its practical utility and adaptability in context, arguing that what we deem “true” often depends on the situation and purpose.
James’s Pragmatism presented a compelling critique of Emma’s approach. If truth was meant to serve people’s immediate needs and contexts, did it make sense to restrict the AI solely to verified responses? Would such a cautious approach, with its focus on factual consistency, miss opportunities to support users in ways that were more responsive and versatile? These reflections led Emma to see three main challenges to the limitations of a strictly fact-focused approach:
- Restricted Practical Utility: James’s Pragmatism suggested that the value of a response lies in its usefulness, meeting people’s goals. Emma could see how, by rigidly adhering to verified information, Option B might limit the AI’s broader appeal. Users looking for creative ideas or exploratory insights might find the AI lacking if it only provided narrow, fact-checked answers. A response could be “true” in the sense of being factual, but not necessarily useful if it didn’t meet the practical needs of the user. Emma worried that in cases like brainstorming or artistic inspiration, the AI’s rigid adherence to factuality might restrict the dynamic engagement users were seeking.
- Loss of Flexibility: James emphasised that truth’s relevance often depends on context; what serves as “true” for one purpose might not hold in another. Emma realised that a fact-focused AI could become rigid in scenarios where users need speculative or flexible responses. For instance, users seeking a mix of creative and factual input might find the AI’s strict fact-checking to be overly cautious, perhaps even uninspired. The AI’s responses could become predictable, losing the flexibility that users may find beneficial in more imaginative or open-ended contexts. Emma saw that to ignore this could be to overlook how people engage with AI tools for more than just accurate information—they might want curiosity-sparking possibilities that are more adaptable than strictly factual.
- Overlooking Contextual Needs: Pragmatism, as James described, encourages truth to serve real-world, contextual needs. Emma realized that users would come to the AI with a variety of intentions, some of which wouldn’t require absolute factuality. For instance, a writer exploring potential storylines or a researcher brainstorming novel concepts might find less value in hard facts and more in thought-provoking suggestions. If the AI stuck to a rigid truth standard, it could miss opportunities to support users whose needs require responses that are open-ended, provocative, or interpretative rather than purely accurate. Emma worried that the AI, with its narrow focus, might inadvertently alienate users who valued flexibility and imagination over strict accuracy.