Cybersecurity investment models often mislead practitioners due to unreliable data, unverified assumptions, and false premises. These models work under idealized conditions rarely seen in real-world settings, so practitioners should carefully adapt them, recognizing their limitations and avoiding strict reliance on their recommendations.
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