Besides weights of synaptic connections, Forward propagation and Back propagation also include weights of synaptic ranges [15,16,19-22]. PNN considers synaptic strength balance in dynamic of phagocytosing of synapses and static of constant sum of synapses length [15],the lead behavior of the school of fish is well embodied in our PNN. Synapse formation will inhibit dendrites generation to a certain extent in experiments, by simulations synapse formation will inhibit the function of dendrites [16]. Closing the critical period will cause neurological disorder in experiments, but worse results in PNN simulations [19]. The memory persistence gradient information of backward circuit similar to the Enforcing Resilience in a Spring Boot. The relatively good and inferior gradient information in synapse formation of backward circuit like the folds of the brain. Considering both negative and positive memories persistence help activate synapse length changes with iterations better than only considering positive memory. So using memory of fear learning and improving of synaptic activity to observe obviously [20]. Memory persistence factor also inhibit local synaptic accumulation. And refers PNN can also introduce the relatively good and inferior solution to update the velocity of particle in PSO. Astrocytic phagocytosis will avoid the local accumulation of synapses by simulation (Lack of astrocytic phagocytosis causes excitatory synapses and functionally impaired synapses accumulate in experiments and lead to destruction of cognition, but local longer synapses and worse results in PNN simulations) [21]. It gives relationship of human intelligence and cortical thickness, individual differences in brain[22].The simple PNN which only has the synaptic phagocytosis regardless of the gradient update. Therefore, is it possible to simulate and plan the factors of biological experiments through modeling?
翻译:除了突触连接的重量外,前方传播和后方传播还包括突变范围的重量[15,16,19-22]。PNN认为,在突触和恒定突触长度总和的静态[15]的动态中,超前传播和后方传播还具有超强的超强强度。鱼群中的铅行为在我们的 PNN 中得到了很好的体现。Synaps的形成将在某种程度上抑制下层生成,通过模拟突触形成将抑制衰变[16]的功能。关键时期的结束将在实验中造成神经系统紊乱,但在PNNNM更长期的模拟中则产生更坏的结果。 与春靴中超前电路相似的后向电路信息。考虑到负和正面的记忆的持久性有助于以恒变变变速度来激活更差的变异性变异性,因此,使用恐惧的记忆学习和改进的同步活动将观测到明显2020年的周期内变变变变变变变。 内硬的内存还表现了本的内变变变的内变变变变变的内变的内变, 。内变的内变的内变变的内变的内变的内变变的内变会的内变变能会的内变能会会的变变变变变的变的会的变变变变的变变的变的变, 。