shirabe.org
n.º 320.023
Significado
  1. 1
    English · JMdict
    statistics overfitting
  2. 2
    English · JMdict
    computing overfitting (in machine learning)
  3. 3
    Español · Wikipedia

    En aprendizaje automático, el sobreajuste (también es frecuente emplear el término en inglés overfitting) es el efecto de sobreentrenar un algoritmo de aprendizaje con unos ciertos datos para los que se conoce el resultado deseado. El algoritmo de aprendizaje debe alcanzar un estado en el que será capaz de predecir el resultado en otros casos a partir de lo aprendido con los datos de entrenamiento, generalizando para poder resolver situaciones distintas a las acaecidas durante el entrenamiento. Sin embargo, cuando un sistema se entrena demasiado (se sobreentrena) o se entrena con datos extraños, el algoritmo de aprendizaje puede quedar ajustado a unas características muy específicas de los datos de entrenamiento que no tienen relación causal con la función objetivo. Durante la fase de sobreajuste el éxito al responder las muestras de entrenamiento sigue incrementándose mientras que su actuación con muestras nuevas va empeorando.

    Leer el artículo completo en Wikipedia · CC-BY-SA

  4. 4
    English · Wikipedia

    In statistics and machine learning, one of the most common tasks is to fit a "model" to a set of training data, so as to be able to make reliable predictions on general untrained data. In overfitting, a statistical model describes random error or noise instead of the underlying relationship. Overfitting occurs when a model is excessively complex, such as having too many parameters relative to the number of observations. A model that has been overfit has poor predictive performance, as it overreacts to minor fluctuations in the training data. The possibility of overfitting exists because the criterion used for training the model is not the same as the criterion used to judge the efficacy of a model. In particular, a model is typically trained by maximizing its performance on some set of training data. However, its efficacy is determined not by its performance on the training data but by its ability to perform well on unseen data. Overfitting occurs when a model begins to "memorize" training data rather than "learning" to generalize from trend. As an extreme example, if the number of parameters is the same as or greater than the number of observations, a simple model or learning process can perfectly predict the training data simply by memorizing the training data in its entirety, but such a model will typically fail drastically when making predictions about new or unseen data, since the simple model has not learned to generalize at all. The potential for overfitting depends not only on the number of parameters and data but also the conformability of the model structure with the data shape, and the magnitude of model error compared to the expected level of noise or error in the data. Even when the fitted model does not have an excessive number of parameters, it is to be expected that the fitted relationship will appear to perform less well on a new data set than on the data set used for fitting. In particular, the value of the coefficient of determination will shrink relative to the original training data. In order to avoid overfitting, it is necessary to use additional techniques (e.g. cross-validation, regularization, early stopping, pruning, Bayesian priors on parameters or model comparison), that can indicate when further training is not resulting in better generalization. The basis of some techniques is either (1) to explicitly penalize overly complex models, or (2) to test the model's ability to generalize by evaluating its performance on a set of data not used for training, which is assumed to approximate the typical unseen data that a model will encounter.

    Leer el artículo completo en Wikipedia · CC-BY-SA

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Códice gramatical

Qué significan las etiquetas de color

Hiragana

ひらがな

El kana redondeado y fluido. El hiragana escribe palabras japonesas nativas, terminaciones gramaticales y todo lo que va sin kanji (o junto a él): es el primer silabario que se aprende. Cada carácter representa una sílaba.

Ejemplo

ねこ — gato