An obvious limitation of machine-learning for security
I recently came across this study titled “Unknown Threats are The Achilles Heel of Email Security”. It concludes that traditional e-mail scanning tools, that also utilize machine-learning to cope with emerging threats, are still not reacting fast enough to new threats. This is probably true, but I think this conclusion should be considered even more widely, beyond e-mail.
Threats are dynamic. Threat actors are creative and well-motivated enough to make threat mitigation an endlessly moving target. So aren’t we fortunate to have this new term, “machine learning”, recently join our tech jargon? Just like many other buzzwords, the term is newer than what it denotes, but nonetheless, a machine that learns the job autonomously seems to be precisely what we need for mitigating ever-changing threats.
All in all, machine-learning is good for security, but yet in some cases it is a less significant addition to our defense arsenal. Why? – Because while you learn, you often don’t do the job well enough; and a machine is no different. Eventually, the merits of learning-while-doing are to be determined by the price of the resulting temporary imperfectness.
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