This paper introduces a novel evolving fuzzy classifier that begins with no initial structure and develops incrementally through a participatory learning-based clustering algorithm. It employs multivariable Gaussian membership functions for rule antecedents and class outputs for consequents. The classifier's learning algorithm is designed to adjust dynamically by creating, merging, deleting, and updating clusters and rules. Uniquely, it features a 'procrastination' approach where clusters are initially formed in a disabled state to robustly manage outliers and ensure only representative data influence the model. Clusters are refined based on compatibility measures using the Mahalanobis distance, with adjustments to learning rates influenced by the nature of incoming data—slowing for anomalies and accelerating for typical inputs. This mechanism enhances adaptability and model accuracy, distinguishing it from existing fuzzy classifiers. Comparative analyses on binary and multiclass tasks demonstrate its superior or competitive performance, underscoring the classifier's innovative approach to evolving fuzzy classification.