We wish to explore the contribution that asocial and social learning might play as a mechanism for self-adaptation in the search for variable-length structures by an evolutionary algorithm. An extremely challenging, yet simple to understand problem landscape is adopted where the probability of randomly finding a solution is approximately one in a trillion. A number of learning mechanisms operating on variable-length structures are implemented and their performance analysed. The social learning setup, which combines forms of both social and asocial learning in combination with evolution is found to be most performant, while the setups exclusively adopting evolution are incapable of finding solutions.
翻译:我们希望探索社会和社会学习作为通过演进算法寻找变长结构的自我适应机制可能做出的贡献。 在随机找到解决办法的可能性约为万亿分之一的情况下,我们采用了一个极具挑战性但简单易懂的问题景观。一些在变长结构上运作的学习机制得到了实施,其绩效也得到了分析。 将社会学习和社会学习形式与进化相结合的社会学习形式相结合的社会学习机制被认为表现最佳,而专门采用进化的设置则无法找到解决办法。