scholarly journals OnMLM: An Online Formulation for the Minimal Learning Machine

Author(s):  
Alan L. S. Matias ◽  
César L. C. Mattos ◽  
Tommi Kärkkäinen ◽  
João P. P. Gomes ◽  
Ajalmar R. da Rocha Neto
Author(s):  
I. Pölönen ◽  
K. Riihiaho ◽  
A.-M. Hakola ◽  
L. Annala

Abstract. Anomaly detection from hyperspectral data needs computationally efficient methods to process the data when the data gathering platform is a drone or a cube satellite. In this study, we introduce a minimal learning machine for hyperspectral anomaly detection. Minimal learning machine is a novel distance-based classification algorithm, which is now modified to detect anomalies. Besides being computationally efficient, minimal learning machine is also easy to implement. Based on the results, we show that minimal learning machine is efficient in detecting global anomalies from the hyperspectral data with low false alarm rate.


Author(s):  
Átilla N. Maia ◽  
Madson L. D. Dias ◽  
João P. P. Gomes ◽  
Ajalmar R. da Rocha Neto

Author(s):  
Weslley L. Caldas ◽  
Joao P.P. Gomes ◽  
Michelle G. Cacais ◽  
Diego P.P. Mesquita

2017 ◽  
Vol 36 (1) ◽  
pp. 41-58 ◽  
Author(s):  
Weslley L. Caldas ◽  
João P. P. Gomes ◽  
Diego P. P. Mesquita

2020 ◽  
Vol 30 (05) ◽  
pp. 2050023
Author(s):  
Madson L. D. Dias ◽  
Átilla N. Maia ◽  
Ajalmar R. da Rocha Neto ◽  
João P. P. Gomes

The training procedure of the minimal learning machine (MLM) requires the selection of two sets of patterns from the training dataset. These sets are called input reference points (IRP) and output reference points (ORP), which are used to build a mapping between the input geometric configurations and their corresponding outputs. In the original MLM, the number of input reference points is the hyper-parameter and the patterns are chosen at random. Therefore, the conventional proposal does not consider which patterns will belong to each reference point group, since the model does not implement an appropriate way of selecting the most suitable patterns as reference points. Such an approach can impact on the decision function in terms of smoothness, resulting in high complexity models. This paper introduces a new approach to select IRP for MLM applied to classification tasks. The optimally selected minimal learning machine (OS-MLM) relies on the multiresponse sparse regression (MRSR) ranking method and the leave-one-out (LOO) criterion to sort the patterns in terms of relevance and select an appropriate number of input reference points, respectively. The experimental assessment conducted on UCI datasets reports the proposal was able to produce sparser models and achieve competitive performance when compared to the regular strategy of selecting MLM input RPs.


2021 ◽  
Author(s):  
Antti Pihlajamäki ◽  
Joakim Linja ◽  
Joonas Hämäläinen ◽  
Paavo Nieminen ◽  
Sami Malola ◽  
...  

Author(s):  
João Paulo P. Gomes ◽  
Amauri H. Souza ◽  
Francesco Corona ◽  
Ajalmar R. Rocha Neto

Author(s):  
Amauri Holanda de Souza Junior ◽  
Francesco Corona ◽  
Yoan Miche ◽  
Amaury Lendasse ◽  
Guilherme A. Barreto ◽  
...  

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