overmodeled
Overmodeled is a term used to describe a situation where a dataset or system has been excessively fitted to its training data, leading to poor performance on new, unseen data. This phenomenon is commonly encountered in machine learning and statistical modeling. When a model is overmodeled, it captures not only the underlying patterns but also the noise and random fluctuations present in the training set. This results in a model that is too complex and specific to the training data, making it unable to generalize effectively.
The causes of overmodeling can vary. Insufficient data, the use of overly complex model architectures, or an
The consequences of an overmodeled system include diminished predictive accuracy, unreliable insights, and wasted computational resources.