| > | | | | predictive analytics. One of the most commonly used |
| Benefits of introducing business intelligence into your | | | | models of predictive analytics is credit scoring. This is |
| business. | | | | used by financial organizations around the world to |
| With business administration techniques reaching all | | | | determine whether a customer is credit worthy or is a |
| time high’s there was an increasing demand for | | | | high risk proposition. |
| strategies that would make businesses more precise. | | | | Ever since predictive analytics was first launched with |
| With the advent of business intelligence into business, a | | | | respect to business, it has undergone several |
| new set of applications came into being. These are | | | | variations and the current models that are frequently |
| now considered to be the determining factor when it | | | | used are predictive models, descriptive models and |
| comes to the success of a business. Predictive | | | | decision models. Predictive models focus mostly on |
| analytics is one of these new age applications. The | | | | analyzing past performances and data to predict to |
| theory behind predictive analytics is quite simple. It | | | | near perfection how a customer is most likely to |
| involves myriad techniques that use past and current | | | | behave in the future. Even the most minute data |
| data to determine or predict future events. Rather than | | | | patterns are analyzed to utmost perfection and the |
| making predictions as pure statements, predictive | | | | result is prediction that guarantees results. Some |
| analytical statements are expressed as values. It is the | | | | models even perform complex calculations during live |
| value in sync with the particular event that determines | | | | transactions. The other model called descriptive model |
| the chances of the trend occurring in the future. | | | | is used to describe relationships that will allow |
| When predictive analytics is used in business, it is often | | | | customers to be classified into groups. |
| used to identify a potential opportunity or evaluate the | | | | Although descriptive models allow the classification of |
| risk with respect to a customer or a transaction. Many | | | | customers, they do not rank them by the prospect of |
| elements from the enormously huge database are | | | | a future transaction by analyzing their past behavior. |
| considered before making these predictions. One of | | | | Last but not the least we have the decision models |
| the key aspects that make predictive analytics so | | | | which are gaining a lot of popularity. These models are |
| popular is that predictions made are mostly precise. | | | | being used increasingly by businesses today to |
| Before completing or initiating a transaction with each | | | | facilitate their complex decisions involving lots of details |
| customer, the predictive analytics model is used to | | | | and numbers. These models are mostly used offline. |
| determine the risk or the opportunity at hand. With this | | | | Although the applications of predictive analytics are |
| model in place, a business can easily isolate customers | | | | myriad, it is customer relationship management that |
| and classify them according to their salability. The | | | | has found most uses for it. It is also being used |
| further marketing plan or other plan of action can then | | | | increasingly in marketing nowadays as marketing |
| be initiated with this data in hand. Hence you will find | | | | campaigns become more precise and sharp. |
| that customer decisions are mostly taken with | | | | |