surspécification
Surspécification is a term in the fields of artificial intelligence, computer science, and decision theory, referring to the process of specifying a requirement or constraint in such a way that is either too vague, too broad, or too complex to be actionable.
The concept is closely related to the idea of under-or over-specification, where an initial requirement specifies
In the AI and decision-making context, surspécification can lead to arbitrary or incorrect solutions, as the
Several factors can contribute to surspécification, including:
* Ambiguous language or unclear requirements
* Lack of specific context or domain knowledge
* Oversimplification or abstraction of complex systems
* Difficulty in quantifying or measuring certain properties or criteria
Mitigating surspécification involves providing clear, concise, and context-specific requirements that are grounded in the available knowledge
Examples of surspécification can be seen in various real-world applications, such as machine learning, decision support
By being aware of the limitations and pitfalls associated with surspécification, system designers can take steps