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安裝中文字典英文字典辭典工具!
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- Incremental Learning Based on Granular Ball Rough Sets for . . .
Granular computing, a new paradigm for solving large-scale and complex problems, has made significant progresses in knowledge discovery Granular ball computing
- Incremental Learning Based on Granular Ball Rough Sets for . . .
As an important research topic, incremental learning based on GrC has achieved some successful achievements In this section, rough sets-based and NRST-based incremental learning
- Incremental reduction methods based on granular ball neighborhood rough . . .
This paper considers dynamic data with multiple added attributes and proposes a new incremental attribute reduction method based on granular ball neighborhood rough sets and attribute grouping
- Tri-Training with Granular-Ball in Weighted Fuzzy Rough Sets
This paper proposes a Tri-Training framework based on the Weighted Fuzzy Rough Sets and integrates the Granular-Ball method to enhance semi-supervised learning through multi-view granulation
- Incremental Learning Based on Granular Ball Rough Sets for . . .
Introduce granular rough sets based on neighborhood-induced granular spaces Characterize and examine eight types of granular spaces and rough set approximations
- GBG++: A Fast and Stable Granular Ball Generation Method for Classification
Therefore, in this paper, based on the attention mechanism, a fast and stable GBG (GBG++) method is proposed first
- Incremental Learning Based on Granular Ball Rough Sets for . . .
Compared with four current state-of-the-art classification methods based on granular computing and four classical classifiers in machine learning, the proposed classifiers in this paper achieve higher classification accuracy as well as better efficiency on benchmark datasets
- A novel granular ball computing-based fuzzy rough set for feature . . .
In this paper, a novel granular ball computing-based fuzzy rough set (GBFRS) is proposed for label distribution feature selection Specifically, the proposed method is first introduced at the finest granularity, i e , calculating similarity relations between single data points
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