Online Boosting Algorithms for Multi-label Ranking
نویسندگان
چکیده
We consider the multi-label ranking approach to multilabel learning. Boosting is a natural method for multilabel ranking as it aggregates weak predictions through majority votes, which can be directly used as scores to produce a ranking of the labels. We design online boosting algorithms with provable loss bounds for multi-label ranking. We show that our first algorithm is optimal in terms of the number of learners required to attain a desired accuracy, but it requires knowledge of the edge of the weak learners. We also design an adaptive algorithm that does not require this knowledge and is hence more practical. Experimental results on real data sets demonstrate that our algorithms are at least as good as existing batch boosting algorithms.
منابع مشابه
Incorporating Prior Knowledge into Boosting for Multi-Label Classification XiaoWang
Multi-label learning deals with the problem where each instance may belong to multiple labels simultaneously. The task of the learning paradigm is to output the label set whose size is unknown a priori for each unseen instance, through analyzing the training data set with known label sets. Existing multi-label learning algorithms are almost based on the purely data-driven method. The larger the...
متن کاملBoostexter: a System for Multiclass Multi-label Text Categorization
This work focuses on algorithms which learn from examples to perform multiclass text and speech categorization tasks. We rst show how to extend the standard notion of classiication by allowing each instance to be associated with multiple labels. We then discuss our approach for multiclass multi-label text categorization which is based on a new and improved family of boosting algorithms. We desc...
متن کاملA Unified Algorithmic Approach for Efficient Online Label Ranking
Label ranking is the task of ordering labels with respect to their relevance to an input instance. We describe a unified approach for the online label ranking task. We do so by casting the online learning problem as a game against a competitor who receives all the examples in advance and sets its label ranker to be the optimal solution of a constrained optimization problem. This optimization pr...
متن کاملMULTIBOOST: A Multi-purpose Boosting Package
The MULTIBOOST package provides a fast C++ implementation of multi-class/multi-label/multitask boosting algorithms. It is based on ADABOOST.MH but it also implements popular cascade classifiers and FILTERBOOST. The package contains common multi-class base learners (stumps, trees, products, Haar filters). Further base learners and strong learners following the boosting paradigm can be easily imp...
متن کاملImproved Boosting Algorithms Using Confidence - rated Predictions
We describe several improvements to Freund and Schapire's AdaBoost boosting algorithm, particularly in a setting in which hypotheses may assign confidences to each of their predictions. We give a simplified analysis of AdaBoost in this setting, and we show how this analysis can be used to find improved parameter settings as well as a refined criterion for training weak hypotheses. We give a spe...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- CoRR
دوره abs/1710.08079 شماره
صفحات -
تاریخ انتشار 2017