Abstract
In real-life industry it is difficult to have fully-labelled datasets due to lack of time, resources or knowledge. In this sense, this paper proposes the design and development of a Partial Labelling Autonomous Hyper-heuristic System PLAHS, a solution that autonomously labels partially labelled databases and evaluates the yielded labelling solution by means of a novel Trustworthiness Metric (TM). The proposal combines a hyper-heuristic inspired approach with a Semi Supervised Learning Clustering (SSLC) methodology that optimizes the parameters of different clustering algorithms, based on a novel semi-supervised metric named Partially Supervised Optimization Metric (PSOM). The proposal has been tested with promising and excellent results on both a real use case for labelling work orders in a cold stamping press, and 13 databases from the UCI (multivariate data) and UCR (time series data) repositories.
| Original language | English |
|---|---|
| Article number | 110718 |
| Journal | Applied Soft Computing Journal |
| Volume | 147 |
| DOIs | |
| Publication status | Published - Nov 2023 |
Keywords
- Harmony search
- Hyper-heuristic
- Industry 4.0
- Partial labelling
- Semi-supervised clustering metric
- Trustworthiness metric