KitBit: A New AI Model for Solving Intelligence Tests and Numerical
Series
- José Manuel Gilpérez Aguilar
, - Victor Corsino ,
- Luis Herrera
José Manuel Gilpérez Aguilar

Universidad de Castilla La Mancha - UCLM
Corresponding Author:josemanuel.gilperez@uclm.es
Author ProfileAbstract
The resolution of intelligence tests, in particular numerical sequences,
has been of great interest in the evaluation of AI systems. We present a
new computational model called KitBit that uses a reduced set of
algorithms and their combinations to build a predictive model that finds
the underlying pattern in numerical sequences, such as those included in
IQ tests and others of much greater complexity. We present the
fundamentals of the model and its application in different cases. First,
the system is tested on a set of number series used in IQ tests
collected from various sources. Next, our model is successfully applied
on the sequences used to evaluate the models reported in the literature.
In both cases, the system is capable of solving these types of problems
in less than a second using standard computing power. Finally, KitBit's
algorithms have been applied for the first time to the complete set of
entire sequences of the well-known OEIS database. We find a pattern in
the form of a list of algorithms and predict the following terms in the
largest number of series to date. These results demonstrate the
potential of KitBit to solve complex problems that could be represented
numerically.01 Nov 2023Published in IEEE Transactions on Pattern Analysis and Machine Intelligence volume 45 issue 11 on pages 13893-13903. 10.1109/TPAMI.2023.3298592