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马克思主义哲学视阈下的互联网思维及其运用 被引量:3
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作者 黄河 《上海师范大学学报(哲学社会科学版)》 CSSCI 北大核心 2018年第3期48-54,共7页
马克思主义哲学视阈下的互联网思维,是普遍联系观念在互联网时代的具体运用,表现为以理论思维去抽象、概括、描述和解释互联网技术以及与此相联系的一切经验现象的思维活动。互联网思维是对当前社会发展状况的具体反映,是由社会生产力... 马克思主义哲学视阈下的互联网思维,是普遍联系观念在互联网时代的具体运用,表现为以理论思维去抽象、概括、描述和解释互联网技术以及与此相联系的一切经验现象的思维活动。互联网思维是对当前社会发展状况的具体反映,是由社会生产力与生产关系来共同决定的,具有意识性与技术性的辩证统一、模糊性与精确性的辩证统一、创新性与体验性的辩证统一、开放性与包容性的辩证统一四大基本特征。基于马克思主义哲学视阈,提炼出互联网思维的"知-行"律、"互-联"律和"加-减"律,并在此基础上讨论各自的具体运用问题。 展开更多
关键词 马克思主义哲学 互联网思维 “知-行”律 “互-”律 “加-”律
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Evolved to adapt: A computational approach to animal innovation and creativity 被引量:2
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作者 Oren KOLODNY Shimon EDELMAN Arnon LOTEM 《Current Zoology》 SCIE CAS CSCD 2015年第2期350-367,共18页
The production of novel behavioral sequences that gives rise to animal innovation and creativity is one of the most intriguing aspects of behavioral evolution. Numerous studies have recently documented the abundance a... The production of novel behavioral sequences that gives rise to animal innovation and creativity is one of the most intriguing aspects of behavioral evolution. Numerous studies have recently documented the abundance and diversity of innova- tive and creative behaviors between and within species, yet the ability to innovate or to act creatively has mainly been described and quantified as a measure of animals' cognitive ability without explicit reference to cognitive mechanisms that may account for these behaviors. Here we discuss the creative process from a computational point of view and suggest such a mechanistic frame- work. In light of recent research on human creativity, animal learning, and animal problem solving, we suggest that animal crea- tivity is best understood as the production of context-appropriate novel behavioral sequences, which may be facilitated by the ability to learn the regularities in the environment and to represent them hierarchically, allowing for generalization. We present a cognitive framework that we recently developed, which employs domain-general mechanisms and has been used in the modeling of a range of sequential behaviors, from animal foraging to language acquisition, and apply it to behavioral innovation. In a series of simulations, we show how innovation and creative behavior can be produced by this learning mechanism, as it constructs a network representing the statistical regularities of the environment. We use the simulations to demonstrate the role of particular cognitive parameters in this process and to highlight the effects of the learning dynamics and individual experience on creativity 展开更多
关键词 CREATIVITY INNOVATION EVOLUTION Learning Animal innovation Behavioral evolution
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