Sunday 14 July 2013

Farmers Insurance Finds Higher Revenue and Lower Claims in Information



Large companies process millions of transactions every year and store huge amounts of data on these transactions. Often, the data is spread across a variety of different computer systems in different areas of the country or the world. This raw data, although needed for record keeping, has little value to managers and decision makers unless it can be filtered and processed into meaningful information. The results can be a staggering increase in revenues and profits. But doing this is the real challenge. Finding strategic information from a mountain of data can be like finding a needle in a haystack, but the effort is usually worth it. With today’s fast computers and a knowledgeable IS staff, the possibility of turning raw data into useful and profitable information can become a reality. This was the case with Farmers Insurance Group.
            Like other companies, Farmers Insurance Group was sitting on a huge amount of raw data. The data, however, was spread across different computer systems in different locations. As in all insurance companies, underwriting determines what insurance policies a company can offer and at what premiums. Farmers’ underwriting business was responsible for assessing insurance risk, which can make the difference between profits and losses. The people who are responsible for determining insurance risk are called actuaries. According to Tom Boardman, an assistant actuary at Farmers, “As competition has gotten more intense in the insurance industry, the traditional ways of segmenting risk aren’t good enough at providing you competitive advantage.” Boardman was referring to how most insurance companies categorize risk. For example, high-powered sports cars are more likely to be involved in expensive accidents than ordinary sedans. Thus, insurance companies can put sports cars in a different risk category than sedans and charge customers who own them a higher premium. In assessing risk, an insurance actuary would traditionally have a hunch, such as sports cars are more prone to accidents than sedans. Then the actuary would test his or her hunch using the computer. According to Boardman, this was like using the computer “to dig up data to prove or UN-prove those hunches.” One disadvantage of this old approach is that small, but profitable, market niches may be ignored or not priced correctly. As a result, Farmers decided to look into a computer system to help it find profitable market niches.
            The company found the help it needed through IBM, which developed a customized software product for Farmers called DecisionEdge. The computer system was an advanced decision support system that combined raw data from seven different databases on a staggering 35 million records. Consolidating the raw data into useful information took about twice as long as expected, but the additional wait was worth it. Farmers was able to locate market niches that it didn’t see before the decision support system. For example, DecisionEdge helped Farmers determine that not all sports car owners are alike—those who were older and had at least one other car were less likely to be in an expensive accident. Once this market niche was identified, Farmers could offer that segment of the sports car market lower premiums. Using Decision Edge to find the market niche resulted in millions of dollars of increased revenues for Farmers.
            The approach used by Farmers is sometimes called “data scrubbing.” It allows a company to consolidate important information and squeeze additional revenues and profits from it. After helping Farmers and seeing a market opportunity, IBM also decided to offer its Decision Edge software to other insurance companies.

Discussion Questions:

1.      How was Farmers able to transform its raw data into meaningful information and additional revenues?

2.      Describe how this approach could be used in other industries.

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