Adelsberger-Mangan D M, Levy W B
Department of Biomedical Engineering, University of Virginia Health Sciences Center, Charlottesville 22908.
Biol Cybern. 1992;67(5):469-77. doi: 10.1007/BF00200991.
This study compares the ability of excitatory, feed-forward neural networks to construct good transformations on their inputs. The quality of such a transformation is judged by the minimization of two information measures: the information loss of the transformation and the statistical dependency of the output. The networks that are compared differ from each other in the parametric properties of their neurons and in their connectivity. The particular network parameters studied are output firing threshold, synaptic connectivity, and associative modification of connection weights. The network parameters that most directly affect firing levels are threshold and connectivity. Networks incorporating neurons with dynamic threshold adjustment produce better transformations. When firing threshold is optimized, sparser synaptic connectivity produces a better transformation than denser connectivity. Associative modification of synaptic weights confers only a slight advantage in the construction of optimal transformations. Additionally, our research shows that some environments are better suited than others for recording. Specifically, input environments high in statistical dependence, i.e. those environments most in need of recoding, are more likely to undergo successful transformations.
本研究比较了兴奋性前馈神经网络在其输入上构建良好变换的能力。这种变换的质量通过最小化两种信息度量来判断:变换的信息损失和输出的统计依赖性。所比较的网络在其神经元的参数特性及其连接性方面彼此不同。所研究的特定网络参数是输出激发阈值、突触连接性以及连接权重的关联修改。最直接影响激发水平的网络参数是阈值和连接性。纳入具有动态阈值调整的神经元的网络能产生更好的变换。当激发阈值优化时,更稀疏的突触连接性比更密集的连接性产生更好的变换。突触权重的关联修改在构建最优变换方面仅具有轻微优势。此外,我们的研究表明,某些环境比其他环境更适合进行记录。具体而言,统计依赖性高的输入环境,即那些最需要重新编码的环境,更有可能成功进行变换。