Ursino Mauro, Cuppini Cristiano, Magosso Elisa
Department of Electrical, Electronic and Information Engineering, University of Bologna, Viale Risorgimento 2, I 40136 Bologna, Italy.
J Integr Neurosci. 2013 Dec;12(4):401-25. doi: 10.1142/S0219635213500246. Epub 2013 Sep 19.
An important issue in semantic memory models is the formation of categories and taxonomies, and the different role played by shared vs. distinctive and salient vs. marginal features. Aim of this work is to extend our previous model to critically discuss the mechanisms leading to the formation of categories, and to investigate how feature saliency can be learned from past experience. The model assumes that an object is represented as a collection of features, which belong to different cortical areas and are topologically organized. Excitatory synapses among features are created on the basis of past experience of object presentation, with a Hebbian paradigm, including the use of potentiation and depression of synapses, and thresholding for the presynaptic and postsynaptic. The model was trained using simple schematic objects as input (i.e., vector of features) having some shared features (so as to realize a simple category) and some distinctive features with different frequency. Three different taxonomies of objects were separately trained and tested, which differ as to the number of correlated features and the structure of categories. Results show that categories can be formed from past experience, using Hebbian rules with a different threshold for postsynaptic and presynaptic activity. Furthermore, features have a different saliency, as a consequence of their different frequency during training. The trained network is able to solve simple object recognition tasks, by maintaining a distinction between categories and individual members in the category, and providing a different role for salient features vs. not-salient features. In particular, not-salient features are not evoked in memory when thinking about the object, but they facilitate the reconstruction of objects when provided as input to the model. The results can provide indications on which neural mechanisms can be exploited to form robust categories among objects and on which mechanisms could be implemented in artificial connectionist systems to extract concepts and categories from a continuous stream of input objects (each represented as a vector of features).
语义记忆模型中的一个重要问题是类别和分类法的形成,以及共享特征与独特特征、显著特征与边缘特征所起的不同作用。这项工作的目的是扩展我们之前的模型,以批判性地讨论导致类别形成的机制,并研究如何从过去的经验中学习特征显著性。该模型假设一个对象被表示为一组特征,这些特征属于不同的皮质区域并按拓扑结构组织。特征之间的兴奋性突触是根据对象呈现的过去经验,采用赫布范式创建的,包括使用突触的增强和抑制,以及对突触前和突触后的阈值设定。该模型使用简单的示意性对象作为输入(即特征向量)进行训练,这些对象具有一些共享特征(以便实现一个简单的类别)和一些频率不同的独特特征。分别对三种不同的对象分类法进行了训练和测试,它们在相关特征的数量和类别的结构方面有所不同。结果表明,类别可以通过过去的经验,使用对突触后和突触前活动有不同阈值的赫布规则来形成。此外,由于特征在训练期间的频率不同,它们具有不同的显著性。经过训练的网络能够通过区分类别和类别中的个体成员,并为显著特征和非显著特征提供不同的作用,来解决简单的对象识别任务。特别是,在思考对象时,非显著特征不会在记忆中被唤起,但当作为模型的输入提供时,它们有助于对象的重建。这些结果可以为利用哪些神经机制在对象之间形成稳健的类别,以及在人工连接主义系统中可以实现哪些机制以从连续的输入对象流(每个对象都表示为一个特征向量)中提取概念和类别提供指示。