Part 4: First Conformal Prediction and Its Applications Workshop (COPA 2012)International audienceVenn Predictors (VPs) are machine learning algorithms that can provide well calibrated multiprobability outputs for their predictions. The only drawback of Venn Predictors is their computational inefficiency, especially in the case of large datasets. In this work, we propose an Inductive Venn Predictor (IVP) which overcomes the computational inefficiency problem of the original Venn Prediction framework. Each VP is defined by a taxonomy which separates the data into categories. We develop an IVP with a taxonomy derived from a multiclass Support Vector Machine (SVM), and we compare our method with other probabilistic methods for SVMs, namely Pla...
In this paper we propose a new algorithm for providing confidence and credibility values for predict...
Conformal prediction is a new framework producing region predictions with a guaranteed error rate. I...
Transformers, currently the state-of-the-art in natural language understanding (NLU) tasks, are pron...
Inductive (IVAP) and cross (CVAP) Venn–Abers predictors are computationally efficient algorithms for...
Part 3: COPA WorkshopInternational audienceIn this paper, we introduce a new method of designing Ven...
Successful use of probabilistic classification requires well-calibrated probability estimates, i.e.,...
Probabilistic classification requires well-calibrated probability estimates, i.e., the predicted cla...
Prediction is the key objective of many machine learning applications. Accurate, reliable and robust...
Support Vector Machine (SVM) is a powerful paradigm that has proven to be extremely useful for the t...
Abstract. A major drawback of most existing medical decision support systems is that they do not pro...
This paper addresses the problem of probability estimation in Multiclass classification tasks combin...
Inductive Conformal Prediction (ICP) is a set of distribution-free and model agnostic algorithms dev...
Abstract — Conformal prediction is a new framework produc-ing region predictions with a guaranteed e...
Multiclass classification and probability estimation have important applications in data analytics. ...
Machine learning (ML) classifiers—in particular deep neural networks—are surprisingly vulnerable to ...
In this paper we propose a new algorithm for providing confidence and credibility values for predict...
Conformal prediction is a new framework producing region predictions with a guaranteed error rate. I...
Transformers, currently the state-of-the-art in natural language understanding (NLU) tasks, are pron...
Inductive (IVAP) and cross (CVAP) Venn–Abers predictors are computationally efficient algorithms for...
Part 3: COPA WorkshopInternational audienceIn this paper, we introduce a new method of designing Ven...
Successful use of probabilistic classification requires well-calibrated probability estimates, i.e.,...
Probabilistic classification requires well-calibrated probability estimates, i.e., the predicted cla...
Prediction is the key objective of many machine learning applications. Accurate, reliable and robust...
Support Vector Machine (SVM) is a powerful paradigm that has proven to be extremely useful for the t...
Abstract. A major drawback of most existing medical decision support systems is that they do not pro...
This paper addresses the problem of probability estimation in Multiclass classification tasks combin...
Inductive Conformal Prediction (ICP) is a set of distribution-free and model agnostic algorithms dev...
Abstract — Conformal prediction is a new framework produc-ing region predictions with a guaranteed e...
Multiclass classification and probability estimation have important applications in data analytics. ...
Machine learning (ML) classifiers—in particular deep neural networks—are surprisingly vulnerable to ...
In this paper we propose a new algorithm for providing confidence and credibility values for predict...
Conformal prediction is a new framework producing region predictions with a guaranteed error rate. I...
Transformers, currently the state-of-the-art in natural language understanding (NLU) tasks, are pron...