Abel's testIn mathematics, Abel's test (also known as Abel's criterion) is a method of testing for the convergence of an infinite series. The test is named after mathematician Niels Henrik Abel. There are two slightly different versions of Abel's test – one is used with series of real numbers, and the other is used with power series in complex analysis. Abel's uniform convergence test is a criterion for the uniform convergence of a series of functions dependent on parameters.
Convergence simpleEn mathématiques, la convergence simple ou ponctuelle est une notion de convergence dans un espace fonctionnel, c’est-à-dire dans un ensemble de fonctions entre deux espaces topologiques. C'est une définition peu exigeante : elle est plus facile à établir que d'autres formes de convergence, notamment la convergence uniforme. Le passage à la limite possède donc moins de propriétés : une suite de fonctions continues peut ainsi converger simplement vers une fonction qui ne l'est pas.
Sparse dictionary learningSparse dictionary learning (also known as sparse coding or SDL) is a representation learning method which aims at finding a sparse representation of the input data in the form of a linear combination of basic elements as well as those basic elements themselves. These elements are called atoms and they compose a dictionary. Atoms in the dictionary are not required to be orthogonal, and they may be an over-complete spanning set. This problem setup also allows the dimensionality of the signals being represented to be higher than the one of the signals being observed.
Induction motorAn induction motor or asynchronous motor is an AC electric motor in which the electric current in the rotor needed to produce torque is obtained by electromagnetic induction from the magnetic field of the stator winding. An induction motor can therefore be made without electrical connections to the rotor. An induction motor's rotor can be either wound type or squirrel-cage type. Three-phase squirrel-cage induction motors are widely used as industrial drives because they are self-starting, reliable, and economical.
Compact convergenceIn mathematics compact convergence (or uniform convergence on compact sets) is a type of convergence that generalizes the idea of uniform convergence. It is associated with the compact-open topology. Let be a topological space and be a metric space. A sequence of functions is said to converge compactly as to some function if, for every compact set , uniformly on as . This means that for all compact , If and with their usual topologies, with , then converges compactly to the constant function with value 0, but not uniformly.
Learning rateIn machine learning and statistics, the learning rate is a tuning parameter in an optimization algorithm that determines the step size at each iteration while moving toward a minimum of a loss function. Since it influences to what extent newly acquired information overrides old information, it metaphorically represents the speed at which a machine learning model "learns". In the adaptive control literature, the learning rate is commonly referred to as gain. In setting a learning rate, there is a trade-off between the rate of convergence and overshooting.
Electric motorAn electric motor is an electrical machine that converts electrical energy into mechanical energy. Most electric motors operate through the interaction between the motor's magnetic field and electric current in a wire winding to generate force in the form of torque applied on the motor's shaft. An electric generator is mechanically identical to an electric motor, but operates with a reversed flow of power, converting mechanical energy into electrical energy.
AC motorAn AC motor is an electric motor driven by an alternating current (AC). The AC motor commonly consists of two basic parts, an outside stator having coils supplied with alternating current to produce a rotating magnetic field, and an inside rotor attached to the output shaft producing a second rotating magnetic field. The rotor magnetic field may be produced by permanent magnets, reluctance saliency, or DC or AC electrical windings.
Q-learningvignette|400x400px|Dans le Q-learning, l'agent exécute une action a en fonction de l'état s et d'une fonction Q. Il perçoit alors le nouvel état s' et une récompense r de l'environnement. Il met alors à jour la fonction Q. Le nouvel état s' devient alors l'état s, et l'apprentissage continue. En intelligence artificielle, plus précisément en apprentissage automatique, le Q-learning est un algorithme d'apprentissage par renforcement. Il ne nécessite aucun modèle initial de l'environnement.
Théorie des choix publicsLa théorie des choix publics, appelée aussi théorie des choix collectifs, est une théorie économique sur le rôle de l'État et le comportement politique des électeurs, des élus, des fonctionnaires et des groupes d'intérêts. Elle s'appuie sur une série de postulats empruntés à l'économie néoclassique (notamment celui de l'individualisme méthodologique et du choix rationnel) pour l'appliquer à la science politique : les décisions politiques ne résulteraient que de la somme de décisions individuelles, prises dans leur propre intérêt personnel par leurs auteurs.