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Secure your IoT: Why Insider Threat Detection is Vital

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Secure your IoT: Why Insider Threat Detection is Vital
Illustration: © IoT For All

Cyberattacks on the Internet of Things (IoT) devices can have dire consequences. Unlike most cyber incidents, attacks on IoT can have potentially catastrophic impacts on the physical world. When we think about threats to IoT devices, we typically consider external threats: distributed denial of service (DDoS) attacks, brute force attacks, botnets, and so on. But the greatest threats to IoT devices often come from inside the targeted organization. 

“Unlike most cyber incidents, attacks on IoT can have potentially catastrophic impacts on the physical world.”

This article will explore why insider threats pose such a threat to IoT devices and what organizations can do to detect and prevent them.

What is an Insider Threat?

An insider threat is a current or former employee, business partner, contractor, or any other legitimate personnel that intentionally or unintentionally exposes their organization’s sensitive data or facilitates a cyberattack. 

What is the Internet of Things?

IoT is an umbrella term that refers to all internet-connected physical devices, vehicles, appliances, and other “things” that developers embed with sensors, software, and network connectivity which allow them to collect and exchange data. 

IoT allows devices to gather data through their sensors and share it with other devices and systems, creating an information network that improves their capabilities and functionality. IoT aims to improve automation, efficiency, and convenience across all sectors, from smart homes to the remote monitoring of manufacturing processes. 

In a smart home, for example, IoT devices such as thermostats, lighting systems, and security cameras are often interconnected and controlled through a central hub, allowing homeowners to manage their home’s temperature, lighting, and security from anywhere, at any time. 

Insider Threats to the Internet of Things

Insider threats to IoT are a bigger problem than ever. Remote working has resulted in a dramatically expanded attack surface and staff accessing sensitive systems and information from home. It’s no longer enough to protect an organization’s perimeter because the perimeter no longer exists. 

Remote working is a significant contributor to the rise of insider threats. Early this year, 74 percent of organizations reported an increase in insider attacks. This increase is perhaps unsurprising; detached from their colleagues and company HQ, it’s not only easier for employees to access and exfiltrate sensitive information than ever before but also to justify their actions, viewing their organization as a faceless behemoth rather than a community. 

Similarly, employees are more dissatisfied than ever. Inflation means salaries don’t go as far as they used to, wealth inequality results in more staff resenting their employers, and the constant threat of redundancy has left a bad taste in many employees’ mouths. Considering personal gain and revenge are two critical motivators for insider threats, it’s no wonder that they are on the rise. 

Detecting and Preventing Insider Threats to the Internet of Things

Detecting and preventing insider threats requires organizations to implement a comprehensive security policy that includes security awareness training, user and entity behavior analytics (UEBA), and data loss prevention (DLP) solutions. Let’s dive deeper into those three essentials to understand better how they prevent insider threats. 

First, security awareness training empowers staff to identify and prevent insider threats. Regular, role-specific training reduces the risk of falling for a social engineering scam and becoming an accidental insider threat. It also increases the likelihood of them identifying possible intentional insider threats. 

UEBA solutions leverage advanced algorithms and machine learning (ML) technologies to detect user and entity behavior abnormalities. By collecting baseline data establishing normal behavior, UEBA solutions automatically detect and flag deviations that could indicate a potential insider threat. For example, suppose a user attempts to access sensitive files outside their jurisdiction, work hours, and usual location. In that case, UEBA solutions alert the security team, who will then investigate further. 

Security teams can also utilize UEBA solutions to assign users risk scores, which indicate how likely an employee is to become an insider threat. These risk scores are developed over time, leveraging the collected data to determine what normal behavior looks like for a user and how often they deviate from that norm. The more often a user exhibits suspicious behavior, the higher their risk score, thus allowing security teams to prioritize investigations should an incident occur. 

Finally, DLP solutions prevent data loss by integrating with core system infrastructure at the endpoint layer; for example, a device’s operating system or browser. By integrating in this way, DLP solutions monitor data ingress and egress on the device without having to decrypt traffic, thus leaving the machine to perform content inspection. Moreover, DLP solutions monitor file operations at the endpoint and cloud layers, using collected metadata to provide security teams with context about what data is business-critical or at the most risk of exposure, allowing them to prioritize security efforts. 

However, organizations must keep in mind that not every solution will suit their needs. It’s important to evaluate solutions according to your specific requirements.

Insider threats are one of the most significant dangers to IoT. Their insight and access to an organization’s most sensitive information put them in a unique position to compromise them, and an increasingly turbulent global economy is motivating more people to become insider threats. Organizations should implement security awareness training, UEBA tools, and DLP solutions to protect their IoT from insider threats. 

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