A simple yet strong pipeline for hotpotqa

D Groeneveld, T Khot, A Sabharwal�- arXiv preprint arXiv:2004.06753, 2020 - arxiv.org
arXiv preprint arXiv:2004.06753, 2020arxiv.org
State-of-the-art models for multi-hop question answering typically augment large-scale
language models like BERT with additional, intuitively useful capabilities such as named
entity recognition, graph-based reasoning, and question decomposition. However, does
their strong performance on popular multi-hop datasets really justify this added design
complexity? Our results suggest that the answer may be no, because even our simple
pipeline based on BERT, named Quark, performs surprisingly well. Specifically, on�…
State-of-the-art models for multi-hop question answering typically augment large-scale language models like BERT with additional, intuitively useful capabilities such as named entity recognition, graph-based reasoning, and question decomposition. However, does their strong performance on popular multi-hop datasets really justify this added design complexity? Our results suggest that the answer may be no, because even our simple pipeline based on BERT, named Quark, performs surprisingly well. Specifically, on HotpotQA, Quark outperforms these models on both question answering and support identification (and achieves performance very close to a RoBERTa model). Our pipeline has three steps: 1) use BERT to identify potentially relevant sentences independently of each other; 2) feed the set of selected sentences as context into a standard BERT span prediction model to choose an answer; and 3) use the sentence selection model, now with the chosen answer, to produce supporting sentences. The strong performance of Quark resurfaces the importance of carefully exploring simple model designs before using popular benchmarks to justify the value of complex techniques.
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