Redirigiendo al acceso original de articulo en 16 segundos...
Inicio  /  Informatics  /  Vol: 10 Par: 2 (2023)  /  Artículo
ARTÍCULO
TITULO

LARF: Two-Level Attention-Based Random Forests with a Mixture of Contamination Models

Andrei Konstantinov    
Lev Utkin and Vladimir Muliukha    

Resumen

This paper provides new models of the attention-based random forests called LARF (leaf attention-based random forest). The first idea behind the models is to introduce a two-level attention, where one of the levels is the ?leaf? attention, and the attention mechanism is applied to every leaf of trees. The second level is the tree attention depending on the ?leaf? attention. The second idea is to replace the softmax operation in the attention with the weighted sum of the softmax operations with different parameters. It is implemented by applying a mixture of Huber?s contamination models and can be regarded as an analog of the multi-head attention, with ?heads? defined by selecting a value of the softmax parameter. Attention parameters are simply trained by solving the quadratic optimization problem. To simplify the tuning process of the models, it is proposed to convert the tuning contamination parameters into trainable parameters and to compute them by solving the quadratic optimization problem. Many numerical experiments with real datasets are performed for studying LARFs. The code of the proposed algorithms is available.

 Artículos similares

       
 
Anastasios Fanariotis, Theofanis Orphanoudakis and Vassilis Fotopoulos    
Having as a main objective the exploration of power efficiency of microcontrollers running machine learning models, this manuscript contrasts the performance of two types of state-of-the-art microcontrollers, namely ESP32 with an LX6 core and ESP32-S3 wi... ver más
Revista: Information

 
Tao Tang, Yuting Cui, Rui Feng and Deliang Xiang    
With the development of deep learning in the field of computer vision, convolutional neural network models and attention mechanisms have been widely applied in SAR image target recognition. The improvement of convolutional neural network attention in exi... ver más
Revista: Information

 
Alessandro Pinheiro, Abílio Oliveira, Bráulio Alturas and Mónica Cruz    
The gaming industry has seen a considerable expansion thanks to the ever-increasing and widespread consumption of digital games in different contexts of use and across all age groups. We are witnessing a commercial boom and awakening the attention of res... ver más
Revista: Information

 
Filippo Orazi, Simone Gasperini, Stefano Lodi and Claudio Sartori    
Quantum computing has rapidly gained prominence for its unprecedented computational efficiency in solving specific problems when compared to classical computing counterparts. This surge in attention is particularly pronounced in the realm of quantum mach... ver más
Revista: Information

 
Hongfei Li, Daqi Zhu, Mingzhi Chen, Tong Wang and Hongxiu Zhu    
Task assignment is of paramount importance in multi-AUV systems, particularly in applications such as bridge inspection where task execution is direction-specific. In such scenarios, the underactuation of AUVs is a critical factor that cannot be ignored.... ver más