202
2016
14.3
2016
(https://www.nature.com/
nature/journal/v529/n7587/full/nature16961.html
More generally, the strength of artificial intelligence programs is based on partially
emulating biology so that autonomous learning is possible, e.g. neural networks or through
hidden Markov models (Maccorduck 2004). Such strategies are used in bioinformatics, for
example, for genome annotation (exon-intron domain; e.g., GenScan program) or for the
prediction of domains (e.g., Pfam, SMART databases), signal proteins (e.g., the SignalP
program), and membrane regions in proteins (e.g., the TMHMM program; Käll et al.
2004) (Chap. 3). For complex optimization problems, such as in protein folding, artificial
evolution by genetic algorithms is also used. Evolutionary strategies are another important
method of artificial intelligence. The more efficiently learning is replicated, the closer one
gets to artificial intelligence. Deep learning seems to bring a new quality to it. We are cur
rently using this for image recognition, for example, of microscopic images.
In general, we can say that artificial intelligence is very good at simulating the recogni
tion of complex features (technical term: feature extraction; pattern recognition). To do
14 We Can Think About Ourselves – The Computer Cannot