Black-box and surrogate optimization for tuning spiking neural models of striatum plasticity
Metadatos
Mostrar el registro completo del ítemAutor
Calvo Cruz, Nicolás; González Redondo, Álvaro; Garrido Alcázar, Jesús Alberto; Martínez Ortigosa, EvaEditorial
Frontiers
Materia
Model tuning Surrogate optimization Black-box optimization Striatum Reinforcement learning Spiking neural networks Dopamine Spike-timing dependent plasticity (STDP)
Fecha
2022-10-20Referencia bibliográfica
Cruz NC... [et al.] (2022) Black-box and surrogate optimization for tuning spiking neural models of striatum plasticity. Front. Neuroinform. 16:1017222. doi: [10.3389/fninf.2022.1017222]
Patrocinador
R+D+i projects - MCIN/AEI RTI2018-095993-B-I00 PID2021-123278OB-I00; European Commission; Junta de Andalucia P18-RT-1193; University of Almeria UAL18-TIC-A020-B; Andalusian government; Spanish Grant INTSENSO MICINN-FEDER-PID2019-109991GB-I00; Regional grants Junta Andalucia-FEDER CEREBIO P18-FR-2378; European Commission 945539; Spanish Government FPU17/04432Resumen
The basal ganglia (BG) is a brain structure that has long been proposed
to play an essential role in action selection, and theoretical models of
spiking neurons have tried to explain how the BG solves this problem. A
recently proposed functional and biologically inspired network model of the
striatum(an important nucleus of the BG) is based on spike-timing-dependent
eligibility (STDE) and captured important experimental features of this nucleus.
The model can recognize complex input patterns and consistently choose
rewarded actions to respond to such sensory inputs. However, model tuning
is challenging due to two main reasons. The first is the expert knowledge
required, resulting in tedious and potentially biased trial-and-error procedures.
The second is the computational cost of assessing model configurations
(approximately 1.78 h per evaluation). This study addresses the model tuning
problem through numerical optimization. Considering the cost of assessing
solutions, the selected methods stand out due to their low requirements
for solution evaluations and compatibility with high-performance computing.
They are the SurrogateOpt solver of Matlab and the RBFOpt library, both
based on radial basis function approximations, and DIRECT-GL, an enhanced
version of the widespread black-box optimizer DIRECT. Besides, a parallel
random search serves as a baseline reference of the outcome of opting for
sophisticatedmethods. SurrogateOpt turns out to be the best option for tuning
this kind of model. It outperforms, on average, the quality of the configuration
found by an expert and works significantly faster and autonomously. RBFOpt
and the randomsearch share the second position, but their average results are
belowthe option found by hand. Finally, DIRECT-GL follows this line becoming
the worst-performing method.