Department of Cognitive and Neural Systems, Boston University, Boston, MA 02215, USA.
Neural Netw. 2010 Apr;23(3):435-51. doi: 10.1016/j.neunet.2009.07.025. Epub 2009 Jul 23.
Memories in Adaptive Resonance Theory (ART) networks are based on matched patterns that focus attention on those portions of bottom-up inputs that match active top-down expectations. While this learning strategy has proved successful for both brain models and applications, computational examples show that attention to early critical features may later distort memory representations during online fast learning. For supervised learning, biased ARTMAP (bARTMAP) solves the problem of over-emphasis on early critical features by directing attention away from previously attended features after the system makes a predictive error. Small-scale, hand-computed analog and binary examples illustrate key model dynamics. Two-dimensional simulation examples demonstrate the evolution of bARTMAP memories as they are learned online. Benchmark simulations show that featural biasing also improves performance on large-scale examples. One example, which predicts movie genres and is based, in part, on the Netflix Prize database, was developed for this project. Both first principles and consistent performance improvements on all simulation studies suggest that featural biasing should be incorporated by default in all ARTMAP systems. Benchmark datasets and bARTMAP code are available from the CNS Technology Lab Website: http://techlab.bu.edu/bART/.
自适应谐振理论 (ART) 网络中的记忆基于匹配模式,这些模式将注意力集中在与活动的自上而下的期望相匹配的底层输入部分上。虽然这种学习策略已被证明对大脑模型和应用都很成功,但计算示例表明,在在线快速学习过程中,对早期关键特征的关注可能会在以后扭曲记忆表示。对于监督学习,有偏差的自适应映射 (bARTMAP) 通过在系统做出预测错误后将注意力从之前关注的特征上转移开,从而解决了对早期关键特征过分强调的问题。小规模的、手动计算的模拟和二进制示例说明了关键的模型动态。二维模拟示例演示了 bARTMAP 记忆的演变,因为它们是在线学习的。基准模拟表明,特征偏向也可以提高大规模示例的性能。为这个项目开发了一个示例,该示例预测电影类型,部分基于 Netflix 奖数据库。无论是第一性原理还是所有模拟研究的一致性能改进都表明,特征偏向应该默认包含在所有的自适应映射系统中。基准数据集和 bARTMAP 代码可从 CNS 技术实验室网站获得:http://techlab.bu.edu/bART/。