Integrated information theory (IIT) is a theoretical framework that provides a quantitative measure to estimate when a physical system is conscious, its degree of consciousness, and the complexity of the qualia space that the system is experiencing. Formally, IIT rests on the assumption that if a surrogate physical system can fully embed the phenomenological properties of consciousness, then the system properties must be constrained by the properties of the qualia being experienced. Following this assumption, IIT represents the physical system as a network of interconnected elements that can be thought of as a probabilistic causal graph, $\mathcal{G}$, where each node has an input-output function and all the graph is encoded in a transition probability matrix. Consequently, IIT's quantitative measure of consciousness, $\Phi$, is computed with respect to the transition probability matrix and the present state of the graph. In this paper, we provide a random search algorithm that is able to optimize $\Phi$ in order to investigate, as the number of nodes increases, the structure of the graphs that have higher $\Phi$. We also provide arguments that show the difficulties of applying more complex black-box search algorithms, such as Bayesian optimization or metaheuristics, in this particular problem. Additionally, we suggest specific research lines for these techniques to enhance the search algorithm that guarantees maximal $\Phi$.
翻译:集成信息理论( IIT) 是一个理论框架, 提供了一个量化的量度来估计物理系统意识、 意识程度和系统所经历的二次空间的复杂程度。 正式地, IIT 依据的假设是, 如果代理物理系统能够完全嵌入意识的血球特性, 那么系统属性必须受到所经历的二次曲线特性的限制。 根据这一假设, IIT 代表物理系统是一个连结元素的网络, 可以被视为概率性因果图, $\mathcal{G}$, 每个节点都有输入输出功能, 并且所有图表都在过渡概率矩阵中编码。 因此, IIT的定量测量值$\Phi$, 是在转换概率矩阵和当前图表状态方面计算的。 在本文中, 我们提供了随机搜索算算法, 能够优化$\Phii$, 以调查高值的图表结构。 我们还提供了一些参数, 用于更复杂的BA级算算法,, 以更复杂的方法来提升我们进行这种搜索。