LARSEN-ELM: Selective ensemble of extreme learning machines using LARS for blended data

نویسندگان

  • Bo Han
  • Bo He
  • Rui Nian
  • Mengmeng Ma
  • Shujing Zhang
  • Minghui Li
  • Amaury Lendasse
چکیده

Extreme learning machine (ELM) as a neural network algorithm has shown its good performance, such as fast speed, simple structure etc, but also, weak robustness is an unavoidable defect in original ELM for blended data. We present a new machine learning framework called “LARSEN-ELM” for overcoming this problem. In our paper, we would like to show two key steps in LARSEN-ELM. In the first step, preprocessing, we select the input variables highly related to the output using least angle regression (LARS). In the second step, training, we employ Genetic Algorithm (GA) based selective ensemble and original ELM. In the experiments, we apply a sum of two sines and four datasets from UCI repository to verify the robustness of our approach. The experimental results show that compared with original ELM and other methods such as OP-ELM, GASEN-ELM and LSBoost, LARSEN-ELM significantly improve robustness performance while keeping a relatively high speed.

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عنوان ژورنال:
  • Neurocomputing

دوره 149  شماره 

صفحات  -

تاریخ انتشار 2015