Memetic computing is a novel computational paradigm that incorporates the notion of meme(s)[1] as basic units of transferable information encoded in computational representations for boosting the performance of artificial evolutionary systems in the domain of search and optimization.[2] [3] [4]
The term memetic computing is often unassumingly misinterpreted to mean the same thing as memetic algorithms (MAs)[5] that typically hybridize population-based global search algorithms with one or more local search schemes. Notably, memetic computing offers a much broader scope, perpetuating the idea of memes into concepts that pave the way towards simultaneous problem learning and optimization approaches.
There are two different methods that describe the history and rise of memetics in computing. These are human-crafted memes and machine-crafted memes.
One of the most widely recognised instantiations of the memetic computing paradigm are the first-generation memetic algorithms (MAs). In particular, MAs are referred to as hybrid algorithms, prescribing a marriage between a population-based global search coupled with one or more local search schemes (interpreted as computational manifestations of memes) such as heuristic solution refinements, gradient descent procedures, etc. The specific choice of local search heuristics are handcrafted (manually specified) by a domain expert and often require a reasonably deep understanding of the problem at hand.
The second generation MAs focus on adaptive data driven selection and integration of memes from a manually specified catalogue of multi-memes (a pool of memes);[6] gleaning patterns (knowledge) from the data generated during the course of a search/optimization run so as to ascertain promising combinations of memes at runtime.[7] [8]
It is only recently that the concept of memes were set free from the narrow scope of merely hand-crafted local search heuristics, paving the path towards fully automated extraction, dispersal and exploitation of knowledge memes. In this era of data-democratization with access to modern computing platforms, emerges an unmanned multi-meme setting; one in which memes, capturing diverse forms of higher-order problem-solving knowledge, are uncovered by machines. They are thereafter made available for reuse across various problems. As such, making it possible for advanced optimizers to automatically harness the transmitted memes and orchestrate custom search behaviours on the fly without human intervention.
The concept of memes have been exploited in various research fields, for example, robotics engineering, multi-agent systems, robotics, optimization,[9] software engineering, and the social sciences etc.