Location-based Behavioral Authentication Using GPS Distance Coherence
This work addresses authentication limitations for users by offering an incremental improvement in lifestyle-based security.
The paper tackled user authentication by proposing a location-based behavioral method using GPS distance coherence, achieving accuracies of 99.42%, 99.12%, and 99.25% with ensemble classifiers.
Most of the current user authentication systems are based on PIN code, password, or biometrics traits which can have some limitations in usage and security. Lifestyle authentication has become a new research approach. A promising idea for it is to use the location history since it is relatively unique. Even when people are living in the same area or have occasional travel, it does not vary from day to day. For Global Positioning System (GPS) data, the previous work used the longitude, the latitude, and the timestamp as the features for the classification. In this paper, we investigate a new approach utilizing the distance coherence which can be extracted from the GPS itself without the need to require other information. We applied three ensemble classification RandomForest, ExtraTrees, and Bagging algorithms; and the experimental result showed that the approach can achieve 99.42%, 99.12%, and 99.25% of accuracy, respectively.