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. 2020 Jun 25;139:110056. doi: 10.1016/j.chaos.2020.110056

Algorithm 1.

Progressive Partial Derivative Linear feature representation.

Input: Dataset ‘DS’ time interval, ‘t’, population size, ‘N’, samples tested, ‘S=s1,s2,,sn
Output: computationally efficient normalized features: ‘NF=f1,f2,.,fn
1: Begin
2: For each population size, ‘N
3: Evaluate number of exposed ‘E(t)’ persons using Eq. (1).
4: Evaluate number of affected ‘A(t)’ persons using Eq. (2).
5: Evaluate the number of cured ‘C(t)’ persons using Eq. (3).
6: Evaluate number of dead ‘D(t)’ persons using Eq. (4).
7: Measure progressive number of cases at time ‘t’ using Eq. (5).
8: Associate describing and dependent variable using Eq. (6).
9: Evaluate first partial derivatives with respect to ‘α’ using Eq. (8).
10: Evaluate first partial derivatives with respect to ‘β’ using Eq. (9).
11: Measure ‘α’ and ‘β’ using Eqs. (10) and (11).
12: Return (α)
13: End for
14: End