A g ( v x ) i i { v ( m m) }{ v ( m m) } v i vav ( m m)( m m) i ( m m)( m m) v ( m m)( m m) SS within g ( v x v x ) i g { v ( X ) m v ( m m) } g { v (
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1 Fisher s Linear Discriminant Function p g i X X M X p X i g m g i X m X i x X m x x x m m 0, i x x m x v x i y m y v SS between ( v x v x ) i
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