Label Distribution Learning using the Squared Neural Family on the Probability Simplex
Label distribution learning (LDL) provides a framework wherein a distribution over categories rather than a single category is predicted, with the aim of addressing ambiguity in labeled data. Existing research on LDL mainly focuses on the task of point estimation, i.e., pinpointing an optimal distri...
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Zusammenfassung: | Label distribution learning (LDL) provides a framework wherein a distribution
over categories rather than a single category is predicted, with the aim of
addressing ambiguity in labeled data. Existing research on LDL mainly focuses
on the task of point estimation, i.e., pinpointing an optimal distribution in
the probability simplex conditioned on the input sample. In this paper, we
estimate a probability distribution of all possible label distributions over
the simplex, by unleashing the expressive power of the recently introduced
Squared Neural Family (SNEFY). With the modeled distribution, label
distribution prediction can be achieved by performing the expectation operation
to estimate the mean of the distribution of label distributions. Moreover, more
information about the label distribution can be inferred, such as the
prediction reliability and uncertainties. We conduct extensive experiments on
the label distribution prediction task, showing that our distribution modeling
based method can achieve very competitive label distribution prediction
performance compared with the state-of-the-art baselines. Additional
experiments on active learning and ensemble learning demonstrate that our
probabilistic approach can effectively boost the performance in these settings,
by accurately estimating the prediction reliability and uncertainties. |
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DOI: | 10.48550/arxiv.2412.07324 |