Inductive Learning of Quantum Behaviors
نویسندگان
چکیده
In this paper studied are new concepts of robotic behaviors deterministic and quantum probabilistic. In contrast to classical circuits, the quantum circuit can realize both of these behaviors. When applied to a robot, a quantum circuit controller realizes what we call quantum robot behaviors. We use automated methods to synthesize quantum behaviors (circuits) from the examples (examples are cares of the quantum truth table). The don’t knows (minterms not given as examples) are then converted not only to deterministic cares as in the classical learning, but also to output values generated with various probabilities. The Occam Razor principle, fundamental to inductive learning, is satisfied in this approach by seeking circuits of reduced complexity. This is illustrated by the synthesis of single output quantum circuits, as we extended the logic synthesis approach to Inductive Machine Learning for the case of learning quantum circuits from behavioral examples.
منابع مشابه
Quantum Behaviors: Synthesis and Measurement
We introduce the concept of robot behaviors deterministic, probabilistic and entangled. In contrast to classical circuits, quantum circuit can realize all three of these behaviors. When applied to a robot, a quantum circuit controller realizes what we call quantum robot behaviors. We describe quantum behaviors (circuits) based on examples (cares of the quantum truth table). Don’t knows (minterm...
متن کاملQuantum Harmonic Sieve: Learning DNF with a Classical Example Oracle
This paper combines quantum computation with classical computational learning theory to produce a quantum computational learning algorithm. The result is a fourier-based inductive learning algorithm that performs a learning task for which there is no known classical equivalent -that of learning DNF using only an example oracle. The main result is a quantum algorithm for finding the large fourie...
متن کاملInductive Supervised Quantum Learning.
In supervised learning, an inductive learning algorithm extracts general rules from observed training instances, then the rules are applied to test instances. We show that this splitting of training and application arises naturally, in the classical setting, from a simple independence requirement with a physical interpretation of being nonsignaling. Thus, two seemingly different definitions of ...
متن کاملOutlier Detection Using Extreme Learning Machines Based on Quantum Fuzzy C-Means
One of the most important concerns of a data miner is always to have accurate and error-free data. Data that does not contain human errors and whose records are full and contain correct data. In this paper, a new learning model based on an extreme learning machine neural network is proposed for outlier detection. The function of neural networks depends on various parameters such as the structur...
متن کاملWHY AND HOW TO APPLY QUANTUM LEARNING AS A NEW APPROACH TO IMPLEMENTATION THE CURRICULUM
The present study was philosophical and analytical research that examines quantum learning as an effective approach to the curriculum in a qualitative way. It explored books, published essays, and related studies, and took some advantages of online materials on the issue from domestic and foreign sources. Because of large body of data on the issue, only the relevant information was included. Da...
متن کامل