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Review for NeurIPS paper: Adaptive Learning of Rank-One Models for Efficient Pairwise Sequence Alignment

Neural Information Processing Systems

Three referees support accept, one indicates reject (with weak self-assigned confidence tough). In my opinion, the rebuttal nicely addressed all points of criticism raised, so I also recommend acceptance. However, please include the additional experiments from the rebuttal in your revised paper.


Adaptive Learning of Rank-One Models for Efficient Pairwise Sequence Alignment

Neural Information Processing Systems

Pairwise alignment of DNA sequencing data is a ubiquitous task in bioinformatics and typically represents a heavy computational burden. State-of-the-art approaches to speed up this task use hashing to identify short segments (k-mers) that are shared by pairs of reads, which can then be used to estimate alignment scores. However, when the number of reads is large, accurately estimating alignment scores for all pairs is still very costly. Moreover, in practice, one is only interested in identifying pairs of reads with large alignment scores. In this work, we propose a new approach to pairwise alignment estimation based on two key new ingredients.


Adaptive Learning of Rank-One Models for Efficient Pairwise Sequence Alignment

Kamath, Govinda M., Baharav, Tavor Z., Shomorony, Ilan

arXiv.org Machine Learning

Pairwise alignment of DNA sequencing data is a ubiquitous task in bioinformatics and typically represents a heavy computational burden. State-of-the-art approaches to speed up this task use hashing to identify short segments (k-mers) that are shared by pairs of reads, which can then be used to estimate alignment scores. However, when the number of reads is large, accurately estimating alignment scores for all pairs is still very costly. Moreover, in practice, one is only interested in identifying pairs of reads with large alignment scores. In this work, we propose a new approach to pairwise alignment estimation based on two key new ingredients. The first ingredient is to cast the problem of pairwise alignment estimation under a general framework of rank-one crowdsourcing models, where the workers' responses correspond to k-mer hash collisions. These models can be accurately solved via a spectral decomposition of the response matrix. The second ingredient is to utilise a multi-armed bandit algorithm to adaptively refine this spectral estimator only for read pairs that are likely to have large alignments. The resulting algorithm iteratively performs a spectral decomposition of the response matrix for adaptively chosen subsets of the read pairs.