Recently, a new measurement – the advice complexity –
was introduced for measuring the information content of online
problems. The aim is to measure
the bitwise information that online algorithms lack, causing them to perform
worse than offline algorithms. Among a large number of problems, a well-known
scheduling problem, job shop scheduling with unit length tasks,
and the paging problem were analyzed within this model.
We observe some connections between advice complexity
and randomization. Our special focus goes to barely random algorithms,
i.e., randomized algorithms that use only a constant number of random bits,
regardless of the input size. We adapt the results on advice complexity
to obtain efficient barely random algorithms for both the job shop
scheduling and the paging problem.
Furthermore, so far, it has not yet been investigated for job shop scheduling
how good an online algorithm may perform when only using a
very small (e.g., constant) number of advice bits.
In this paper, we answer this question by
giving both lower and upper bounds, and also improve the
best known upper bound for optimal algorithms.