Recently, learning scheduling problems have received increasing
attention. However, the majority of the research assume that the
actual job processing time is a function of its position. This paper
deals with the single-machine scheduling problem with a
sum-of-processing-time-based learning effect. By the effect of
sum-of-processing-time-based learning, we mean that the processing
time of a job is defined by total normal processing time of jobs in
front of it in the sequence. We show that the single-machine
makespan problem remains polynomially solvable under the proposed
model. We show that the total completion time minimization problem
for a≥1 remains polynomially solvable under the proposed
model. For the case of 0<a<1, we show that an optimal schedule of
the total completion time minimization problem is V-shaped with respect to normal job processing times