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BioGD: Bio-inspired robust gradient descent (CROSBI ID 274280)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Kulikovskikh, Ilona ; Prokhorov, Sergej ; Lipić, Tomislav ; Legović, Tarzan ; Šmuc, Tomislav BioGD: Bio-inspired robust gradient descent // PLoS One, 14 (2019), 7; e0219004, 19. doi: 10.1371/journal.pone.0219004

Podaci o odgovornosti

Kulikovskikh, Ilona ; Prokhorov, Sergej ; Lipić, Tomislav ; Legović, Tarzan ; Šmuc, Tomislav

engleski

BioGD: Bio-inspired robust gradient descent

Recent research in machine learning pointed to the core problem of state-of-the-art models which impedes their widespread adoption in different domains. The models’ inability to differentiate between noise and subtle, yet significant variation in data leads to their vulnerability to adversarial perturbations that cause wrong predictions with high confidence. The study is aimed at identifying whether the algorithms inspired by biological evolution may achieve better results in cases where brittle robustness properties are highly sensitive to the slight noise. To answer this question, we introduce the new robust gradient descent inspired by the stability and adaptability of biological systems to unknown and changing environments. The proposed optimization technique involves an open-ended adaptation process with regard to two hyperparameters inherited from the generalized Verhulst population growth equation. The hyperparameters increase robustness to adversarial noise by penalizing the degree to which hardly visible changes in gradients impact prediction. The empirical evidence on synthetic and experimental datasets confirmed the viability of the bio-inspired gradient descent and suggested promising directions for future research. The code used for computational experiments is provided in a repository at https://github.com/yukinoi/bio_gradient_descent.

robust machine learning ; gradient descent ; gradient regularization ; Verhulst model

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Podaci o izdanju

14 (7)

2019.

e0219004

19

objavljeno

1932-6203

10.1371/journal.pone.0219004

Trošak objave rada u otvorenom pristupu

Povezanost rada

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