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How Can Firms Apply Big Data in Risk Management


Utilization of big data can improve an organization's risk management strategies. It allows the organization to adopt a predictive approach, which increases the accuracy of threat detections. As a result, the firm will institute mitigation mechanisms before the threats affect normal operations. If an organization is not adopting big data analytics, then it is missing on its incredible benefits. The firm is likely to lose its competitiveness since most competitors are harnessing the benefits of big data to analyze risks, thus enhancing customer satisfaction. Here is more about the impact of using bog data analytics in risk analytics.

Big data analytics helps identify enterprise risks that have the potential to negatively impact the business. The evolution of technology has also raised the risk of cyber-attacks, making it necessary to devise a strategy to detect the threats before they destroy critical aspects of the business.  Using big data is one of the surest methods to predict the security future of the company. This approach's predictive nature provides a platform to analyze all the cyber threats in real-time and suggests possible mitigation strategies.

The use of big data analysis is an excellent way of detecting money laundering and other fraudulent activities. The massive volume of data gained from different sources guarantees close monitoring of activities in a multitude of platforms. This increases the probability of identifying plans to engage in fraud before it happens. Large organizations, governments, and other lending agencies have embraced the big data analytics approach to identify fraud.

Having the right business intelligence tools can lead to the identification of cost-reducing opportunities. However, big data analytics can allow the organization to quickly identify any anomalies in the margins, allowing the firm to make changes in price and cut costs where required. This is especially useful for larger companies with multiple facilities, where anomalies may go unnoticed.Read More

Fighting Fraud with Big Data Analytics:

More companies today are using IT systems to store and manage enormous business data pouring out of the burgeoning communication channels. As more business components and the real world environments embrace digital technologies, fraudsters too are becoming IT-savvy. In the wake of these developments where a fraud can be hidden in large volumes of data, manual checks to detect threats doesn’t result in fruitful business outcomes. The financial institutions, in particular, are investing heavily to prevent fraudulent attacks in the wake of increased threat to user data. The advancements in technology are helping security professionals to adopt smart ways to detect fraudulent activities.

For instance, big data has emerged as the potent weapon to combat fraud. Big data analytics enables financial institutions to analyze massive data volumes and create precise predictive models to identify fraud in real time and take preemptive measures to thwart the damage.

The unique fraud detection and prevention techniques like real-time behavioral analysis through big data analytics paint a new outlook to the fraud detecting techniques. The use of data analytics allows institutions to detect unusual activities, obtain behavioral patterns, and locate uncommon transactions that in turn help prevent fraud. To protect the data that are handled by the third parties, organizations need to design procedures and policies around that data.

In general, companies restrict their fraud data analysis only to the financial aspect. More than financial data, data analytics also plays an important role in analyzing comprehensive data coming from internal and external sources to predict and create early-warnings for fraud. The use of big data analysis helps businesses to detect potential fraud instances and employ effective threat mitigation programs.

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