论文标题

认识概念并认可音乐主题。量子语义分析

Recognizing Concepts and Recognizing Musical Themes. A Quantum Semantic Analysis

论文作者

Chiara, Maria Luisa Dalla, Giuntini, Roberto, Negri, Eleonora, Sergioli, Giuseppe

论文摘要

在以前的一些经验的基础上,如何认可抽象概念和音乐主题?在这个问题方面比较人类和人工智能的不同行为很有趣。通常,从给定的一组已知示例中抽象一个概念(例如表)的人类思想会创建一个表格:一种模糊的焦点图像,并不完全与具有确定特征的特定表格完全对应。在音乐主题的情况下,出现了类似的情况。可以教会智能机器的盖斯塔利特模式的构造吗?可以在模式识别和机器学习的量子方法的框架内成功讨论此问题。基本思想是用量子数据集替换经典数据集,其中对象或音乐主题可以正式表示为量子信息部分,涉及量子世界表征的不确定性和歧义性。在此框架中,可以通过给定量子数据集的阳性质心数学概念来模拟格式塔的直观概念。因此,至关重要的问题“我们如何根据以前的经历对新对象或新音乐主题(我们已经听过)进行分类?”可以根据一些特殊的量子相似性关系来处理。尽管对于人类和人工智能而言,识别程序是不同的,但在两种情况下似乎都起作用的“面对问题”的常见方法。

How are abstract concepts and musical themes recognized on the basis of some previous experience? It is interesting to compare the different behaviors of human and of artificial intelligences with respect to this problem. Generally, a human mind that abstracts a concept (say, table) from a given set of known examples creates a table-Gestalt: a kind of vague and out of focus image that does not fully correspond to a particular table with well determined features. A similar situation arises in the case of musical themes. Can the construction of a gestaltic pattern, which is so natural for human minds, be taught to an intelligent machine? This problem can be successfully discussed in the framework of a quantum approach to pattern recognition and to machine learning. The basic idea is replacing classical data sets with quantum data sets, where either objects or musical themes can be formally represented as pieces of quantum information, involving the uncertainties and the ambiguities that characterize the quantum world. In this framework, the intuitive concept of Gestalt can be simulated by the mathematical concept of positive centroid of a given quantum data set. Accordingly, the crucial problem "how can we classify a new object or a new musical theme (we have listened to) on the basis of a previous experience?" can be dealt with in terms of some special quantum similarity-relations. Although recognition procedures are different for human and for artificial intelligences, there is a common method of "facing the problems" that seems to work in both cases.

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