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access icon free Simplified quantised kernel least mean square algorithm with fixed budget

Quantised kernel least mean square algorithm with fixed budget (QKLMS-FB) is an effective method for constraining the final network size of QKLMS at the cost of less accuracy loss. However, the significances of all centres in the dictionary are required to be calculated at each iteration, which will lead to linear increasing in the computational complexity of QKLMS-FB with the centre number. To reduce the computational cost and retain a better accuracy simultaneously, only the coefficient vector and influence factor are incorporated to measure the significance of each centre, thereby generating a novel simplified QKLMS-FB (SQKLMS-FB). In addition, the gradient descent method is applied in the SQKLMS-FB to update the coefficient of the closest centre for accuracy improvement. Simulations both in stationary and non-stationary cases validate the proposed SQKLMS-FB.

References

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http://iet.metastore.ingenta.com/content/journals/10.1049/el.2016.1799
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