“Large enterprises, especially financial companies, are becoming obsessed with knowing their vulnerabilities and building intrusion-proof security,” Misra added, “far more so than even five years ago.” In general, small companies are more vulnerable to malware because they don’t patch or update their software as rigorously as larger firms. In response, several startups are working to identify markers for enterprise systems that will result in more sophisticated and focused insurance policies.
To determine the probability of a malware incursion into a network, Iyengar and Misra are+ working with data supplied by a New York–based startup called SecurityScorecard, which obtains the information from a proprietary collection of security intelligence sensors—essentially an intelligence engine vacuuming up many terabytes of unique data sets per month from malware analysis pipelines, monitored hacker chatter crawlers, honeypot/sinkhole infrastructures, vulnerability cadence checkers, and deep social engineering sensors. Iyengar and Misra, funded by a two-year Dean’s grant for interdisciplinary research, use machine learning to identify vulnerabilities that are common across systems and companies and then model the probability of intrusions. “Reducing intrusions through best practices is making the world a safer place,” Iyengar said.