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accuracy detection

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Published By: FireEye     Published Date: Feb 28, 2014
Organizations face a new breed of cyber attacks that easily thwart traditional defenses. These advanced attacks are targeted. They are persistent. And they are devastatingly effective at breaching your systems and stealing your sensitive data. This paper examines: The limitations of existing security solutions; Several security architectures, including sandbox-based products; An architecture built from the ground up to truly protect against today's advanced attacks.
Tags : 
fireeye, persistent threats, advanced attacks, data centers, cyber-attacks, speed of detection, accuracy of detection, small businesses, information security, security threats, fireeye platform, protecting data, cyber targets, cybercriminals, prime target, midsize businesses, security, it management
    
FireEye
Published By: FireEye     Published Date: Feb 28, 2014
If I were to boil down these survey results to a single sentence, it would be this: To keep pace with today’s advanced threats, incident response teams need tools and techniques that give them greater speed, accuracy and insight.
Tags : 
fireeye, incident response, greater speed, greater accuracy, advanced threats, response teams, detect malware, persistent threats, information security, security threats, costly breaches, ineffective defense, cyber-attacks, speed of detection, accuracy of detection, security model, shared risks, security, it management, monitoring
    
FireEye
Published By: IBM     Published Date: Aug 07, 2012
Insurers lose millions each year through fraudulent claims. Learn how leading insurance companies are using data mining techniques to target claims with the greatest likelihood of adjustment, improving audit accuracy and saving time and resources. Read this paper to learn how to combine powerful analytical techniques with your existing fraud detection and prevention efforts; build models based on previously audited claims and use them to identify potentially fraudulent future claims; ensure adjusters focus on claims most likely to be fraudulent; and deploy results to the people who can use the information to eradicate fraud and recoup money.
Tags : 
data, mining, detect, insurance, fraud, insurers, fraudulent, claims, insurance, data, mining, techniques, audit, analytical, techniques, fraud, detection, it management, data center
    
IBM
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