Rao Vinayak A, Howard Marc W
Syracuse University, Department of Psychology, 430 Huntington Hall, Syracuse, NY 13244.
Adv Neural Inf Process Syst. 2008;20:1193-1200.
Semantic memory refers to our knowledge of facts and relationships between concepts. A successful semantic memory depends on inferring relationships between items that are not explicitly taught. Recent mathematical modeling of episodic memory argues that episodic recall relies on retrieval of a gradually-changing representation of temporal context. We show that retrieved context enables the development of a global memory space that reflects relationships between all items that have been previously learned. When newly-learned information is integrated into this structure, it is placed in some relationship to all other items, even if that relationship has not been explicitly learned. We demonstrate this effect for global semantic structures shaped topologically as a ring, and as a two-dimensional sheet. We also examined the utility of this learning algorithm for learning a more realistic semantic space by training it on a large pool of synonym pairs. Retrieved context enabled the model to "infer" relationships between synonym pairs that had not yet been presented.
语义记忆指的是我们对事实以及概念之间关系的认知。成功的语义记忆依赖于推断未被明确教授的项目之间的关系。近期关于情景记忆的数学模型认为,情景回忆依赖于对时间背景逐渐变化的表征的检索。我们表明,检索到的背景能够促成一个全局记忆空间的形成,该空间反映了所有先前学过的项目之间的关系。当新学信息被整合到这个结构中时,它会与所有其他项目建立某种关系,即便这种关系并未被明确学过。我们针对拓扑形状为环形和二维平面的全局语义结构展示了这种效应。我们还通过在大量同义词对上进行训练,检验了这种学习算法在学习更现实的语义空间方面的效用。检索到的背景使模型能够“推断”尚未呈现的同义词对之间的关系。