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Multiple instance learning for sequence data with across bag dependencies

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Academic year: 2021

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Figure

Figure  2  represents  the  system  overview  of  ABClass.  Each  set  of  related  instances  is  presented  by  its  own motifs vector
Figure 2 System overview of the ABClass approach
Table  1  presents,  for  each  value  of  α  and  β,  the  number  of  extracted  motifs  from  each  set  of  related  sequences (i.e., orthologous proteins)
Table 2 Sparsity of the attribute-value matrix generated for the naive approach  Motif extraction   setting     Total number  of motifs  Sparsity (%)  S1  519  84.3  S2  1141  84  S3  4167  89.6  S4  7670  93.5
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