Neural Feature-Adaptation for Symbolic Predictions Using Pre-Training and Semantic Loss
Vedant Shah, Aditya Agrawal, Lovekesh Vig, Ashwin Srinivasan, Gautam, Shroff, Tanmay Verlekar

TL;DR
This paper explores how semantic loss and feature-adaptation can improve neurosymbolic systems by enabling accurate symbolic predictions without relying on domain-specific pre-processing, even with imperfect feature predictions.
Contribution
It demonstrates that semantic loss enables feature-adaptation of neural extractors in neurosymbolic systems without prior feature delineation, enhancing transferability across domains.
Findings
Semantic loss allows accurate predictions without feature pre-processing.
Pre-training with imperfect features improves feature adaptation.
Reusing symbolic explanations across related domains is feasible.
Abstract
We are interested in neurosymbolic systems consisting of a high-level symbolic layer for explainable prediction in terms of human-intelligible concepts; and a low-level neural layer for extracting symbols required to generate the symbolic explanation. Real data is often imperfect meaning that even if the symbolic theory remains unchanged, we may still need to address the problem of mapping raw data to high-level symbols, each time there is a change in the data acquisition environment or equipment. Manual (re-)annotation of the raw data each time this happens is laborious and expensive; and automated labelling methods are often imperfect, especially for complex problems. NEUROLOG proposed the use of a semantic loss function that allows an existing feature-based symbolic model to guide the extraction of feature-values from raw data, using `abduction'. However, the experiments…
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Taxonomy
TopicsNeural Networks and Applications · Explainable Artificial Intelligence (XAI) · Stock Market Forecasting Methods
