We propose to utilize machine learning to predict the electron density, n(e), and temperature, T-e, from He I line intensity ratios. In this approach, training data consist of measured He I line ratios as input and n(e) and T-e measured using other diagnostic(s) as desired output, which is a Langmuir probe in our study. Support vector machine regression analysis is, then, performed with the training data to develop a predictive model for n(e) and T-e, separately. It is confirmed that n(e) and T-e predicted using the developed models agree well with those from the Langmuir probe in the ranges of 0.28 x 10(18) <= n(e) (m(-3)) <= 3.8 x 10(18) and 3.2 <= T-e (eV) <= 7.5. The developed models are, further, examined with an evaluation data, which are not included in the training data, and are found to well reproduce absolute values and radial profiles of probe-measured n(e) and T-e.
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