Human-like Time Series Summaries via Trend Utility Estimation
- URL: http://arxiv.org/abs/2001.05665v2
- Date: Thu, 2 Apr 2020 20:55:15 GMT
- Title: Human-like Time Series Summaries via Trend Utility Estimation
- Authors: Pegah Jandaghi, Jay Pujara
- Abstract summary: We propose a model to create human-like text descriptions for time series.
Our system finds patterns in time series data and ranks these patterns based on empirical observations of human behavior.
The output of our system is a natural language description of time series that attempts to match a human's summary of the same data.
- Score: 13.560018516096754
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In many scenarios, humans prefer a text-based representation of quantitative
data over numerical, tabular, or graphical representations. The attractiveness
of textual summaries for complex data has inspired research on data-to-text
systems. While there are several data-to-text tools for time series, few of
them try to mimic how humans summarize for time series. In this paper, we
propose a model to create human-like text descriptions for time series. Our
system finds patterns in time series data and ranks these patterns based on
empirical observations of human behavior using utility estimation. Our proposed
utility estimation model is a Bayesian network capturing interdependencies
between different patterns. We describe the learning steps for this network and
introduce baselines along with their performance for each step. The output of
our system is a natural language description of time series that attempts to
match a human's summary of the same data.
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