Customer documents and invoices were already being processed automatically 15 years ago. This automatic verification worked (and often still works) on the basis of what are known as if-then rules. For the calculation of health insurance claims, for example, these rules work like this: if the insured person is covered by plan X, indemnification for dental prosthesis may not exceed Y%. Such rules can already be applied to a surprisingly high number of automated claims decisions.
However, given the approximately 20,000 possible codes for medical diagnoses, the thousands of different invoice formats and the more than 1,000 DKV insurance plans available to customers, the system of if-then rules inevitably, and quite quickly, reaches its limits. The problem is clarity and whether the system is capable of making clear distinctions when extracting information (step 2) and of making the right decision (step 3).
Some clarity can already be lost in the data classification stage (step 1). If, say, a customer registers a new residential address, this could have several reasons. It might mean: send all correspondence to this address from now on. Or it could mean that the insurance risk in the new neighbourhood or home has changed. If that’s the case, the customer’s home insurance would need to be updated accordingly. The information “change of address” can thus have various implications for the insurer.
If-then rule systems aren’t usually capable of solving such complex, multidimensional cases. A well-trained AI model, on the other hand, has no problem handling such multidimensionality!
AI can handle multidimensional classification, extraction and decision-making
AI follows the same pattern as the three steps described above. The process begins with classification, which is similar to sorting customer correspondence into the relevant departments’ inboxes, as would have been the process before. Correspondence relating to a change of address goes to the department that handles address changes, hospital bills go to the inpatient department, and prescriptions go to the prescriptions department.
The next step is to extract the thematic data. In the prescriptions department, the relevant data is read from the invoice: nasal drops for €10.80, plus eye drops for €5.60. That adds up to €16.40. But the amount to be paid out to the insured person is still not clear. This is verified in the third step, when the system checks which services the plan covers (performed by our “tariff engine”). However, we also check whether a given procedure is medically justifiable.
This is not as simple as it sounds. For example, it’s down to the insurer to ascertain whether a nose correction job has been performed for medical reasons or on cosmetic grounds. The insurance company pays out for medically justified treatment, but generally not for cosmetic treatment. But the reasons for medical justification can be incredibly diverse, including accidents that cause damage to the face and nose, of course, but also mental illness. The old systems of rules would fail completely here, but AI can handle it.