While automatic summarization techniques have made significant advancements,
their primary focus has been on summarizing short news articles or documents
that have clear structural patterns like scientific articles or government
reports. There has not been much exploration into developing efficient methods
for summarizing financial documents, which often contain complex facts and
figures. Here, we study the problem of bullet point summarization of long
Earning Call Transcripts (ECTs) using the recently released ECTSum dataset. We
leverage an unsupervised question-based extractive module followed by a
parameter efficient instruction-tuned abstractive module to solve this task.
Our proposed model FLAN-FinBPS achieves new state-of-the-art performances
outperforming the strongest baseline with 14.88% average ROUGE score gain, and
is capable of generating factually consistent bullet point summaries that
capture the important facts discussed in the ECTs.Comment: Accepted in SIGIR 202