B-bleaching: Agile Overtraining Avoidance in the WiSARD Weightless Neural Classifier
نویسندگان
چکیده
Weightless neural networks constitute a still not fully explored Machine Learning paradigm, even if its first model, WiSARD, is considered. Bleaching, an improvement on WiSARD’s learning mechanism was recently proposed in order to avoid overtraining. Although presenting very good results in different application domains, the original sequential bleaching and its confidence modulation mechanisms still offer room for improvement. This paper presents a new variation of the bleaching mechanism and compares the three strategies performance on a complex domain, that of multilingual grammatical categorization. Experiments considered both number of iterations and accuracy. Results show that binary bleaching allows for a considerable improvement to number of iterations whilst not introducing loss of accuracy.
منابع مشابه
Recognition of HIV-1 subtypes and antiretroviral drug resistance using weightless neural networks
This work presents an application of an improved version of the WiSARD weightless neural network in the recognition of different mutation types of HIV-1 and in the determination of antiretroviral drugs resistence. The data set used consists of 1205 gene sequence of the HIV-1 protease of subtypes B, C and F from patients under treatment failure. Experiments performed with the bleaching technique...
متن کاملAdvances on Weightless Neural Systems
Random Access Memory (RAM) nodes can play the role of artificial neurons that are addressed by Boolean inputs and produce Boolean outputs. The weightless neural network (WNN) approach has an implicit inspiration in the decoding process observed in the dendritic trees of biological neurons. An overview on recent advances in weightless neural systems is presented here. Theoretical aspects, such a...
متن کاملExtracting rules from DRASiW's "mental images"
DRASiW is an extension of the WiSARD weightless neural model that provides the ability of producing examples/prototypes, called “mental images”, from learnt categories. This work introduces a novel way of performing rule extraction by applying the WiSARD/DRASiW RAMbased neural model upon a well-known machine learning benchmark. A functional exploration is offered in order to demonstrate how the...
متن کاملExtracting fuzzy rules from "mental" images generated by a modified WISARD perceptron
The pioneering WiSARD weightless neural classifier is based on the collective response of RAM-based neurons. The ability of producing prototypes, analog to “mental images”, from learned categories, was first introduced in the DRASiW model. By counting the frequency of write accesses at each RAM neuron during the training phase, it is possible to associate the most accessed addresses to the corr...
متن کاملParallel WiSARD object tracker: a ram-based tracking system
This paper proposes the Parallel WiSARD Object Tracker (PWOT), a new object tracker based on the WiSARD weightless neural network that is robust against quantization errors. Object tracking in video is an important and challenging task in many applications. Difficulties can arise due to weather conditions, target trajectory and appearance, occlusions, lighting conditions and noise. Tracking is ...
متن کامل