Assume the following data has been collected from students: D I G do il g0 s1 do i0 gl SO d1 il g0 sl d1 il g2 s1 d1 i0 g3 s0 i0 g2 s0 d1 do i0 g3 s0 S L 11 11 11 10 10 11 10 d1 il g3 sl 10 d1 il g2 s0 10 Describe the factors and find their parameters using ML training from the given data. (Hint: if you enc division bu zore you nood to uso Lonlege smoothing:
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