E. L. DeLosh, J. R. Busemeyer, and M. A. McDaniel (1997) found that when learning a positive, linear relationship between a continuous predictor (x) and a continuous criterion (y), trainees tend to underestimate y on items that ask the trainee to extrapolate. In 3 experiments, the authors examined the phenomenon and found that the tendency to underestimate y is reliable only in the so-called lower extrapolation region-that is, new values of x that lie between zero and the edge of the training region. Existing models of function learning, such as the extrapolation-association model (DeLosh et al., 1997) and the population of linear experts model (M. L. Kalish, S. Lewandowsky, & J. Kruschke, 2004), cannot account for these results. The author...
The Dunning–Kruger effect states that low performers vastly overestimate their performance while hig...
<p>A) Results for the 2-Pair Condition of Experiment 2. B) Results for the 5-Pair Condition of Exper...
We oftenen counter pairs of variables in the world whose mutual relationship can be described by a f...
Understanding the development of non-linear processes such as economic or population growth is an im...
This article reports the results of an experiment addressing extrapolation in function learning, in ...
We introduce a new approach for exploring how humans learn and represent functional relationships ba...
Overfitting in linear regression is broken down into two main causes. First, the formula for the est...
Methods for combining predictions from different models in a supervised learning setting must someh...
Learning-curve models fitted to initial data are used to predict subsequent performance; however, th...
The phenomenon of benign overfitting is one of the key mysteries uncovered by deep learning methodol...
We consider the problem of function estimation in the case where an underlying causal model can be i...
This paper serves to compare existing models of function learning (EXAM & POLE) on a complex int...
We examine the necessity of interpolation in overparameterized models, that is, when achieving optim...
The Dunning–Kruger effect states that low performers vastly overestimate their performance while hig...
The remarkable practical success of deep learning has revealed some major surprises from a theoretic...
The Dunning–Kruger effect states that low performers vastly overestimate their performance while hig...
<p>A) Results for the 2-Pair Condition of Experiment 2. B) Results for the 5-Pair Condition of Exper...
We oftenen counter pairs of variables in the world whose mutual relationship can be described by a f...
Understanding the development of non-linear processes such as economic or population growth is an im...
This article reports the results of an experiment addressing extrapolation in function learning, in ...
We introduce a new approach for exploring how humans learn and represent functional relationships ba...
Overfitting in linear regression is broken down into two main causes. First, the formula for the est...
Methods for combining predictions from different models in a supervised learning setting must someh...
Learning-curve models fitted to initial data are used to predict subsequent performance; however, th...
The phenomenon of benign overfitting is one of the key mysteries uncovered by deep learning methodol...
We consider the problem of function estimation in the case where an underlying causal model can be i...
This paper serves to compare existing models of function learning (EXAM & POLE) on a complex int...
We examine the necessity of interpolation in overparameterized models, that is, when achieving optim...
The Dunning–Kruger effect states that low performers vastly overestimate their performance while hig...
The remarkable practical success of deep learning has revealed some major surprises from a theoretic...
The Dunning–Kruger effect states that low performers vastly overestimate their performance while hig...
<p>A) Results for the 2-Pair Condition of Experiment 2. B) Results for the 5-Pair Condition of Exper...
We oftenen counter pairs of variables in the world whose mutual relationship can be described by a f...