A Foundation for Spatio-Textual-Temporal Cube Analytics (Extended Version)

12/08/2020
by   Mohsin Iqbal, et al.
0

Large amounts of spatial, textual, and temporal data are being produced daily. This is data containing an unstructured component (text), a spatial component (geographic position), and a time component (timestamp). Therefore, there is a need for a powerful and general way of analyzing spatial, textual, and temporal data together. In this paper, we define and formalize the Spatio-Textual-Temporal Cube structure to enable combined effective and efficient analytical queries over spatial, textual, and temporal data. Our novel data model over spatio-textual-temporal objects enables novel joint and integrated spatial, textual, and temporal insights that are hard to obtain using existing methods. Moreover, we introduce the new concept of spatio-textual-temporal measures with associated novel spatio-textual-temporal-OLAP operators. To allow for efficient large-scale analytics, we present a pre-aggregation framework for the exact and approximate computation of spatio-textual-temporal measures. Our comprehensive experimental evaluation on a real-world Twitter dataset confirms that our proposed methods reduce query response time by 1-5 orders of magnitude compared to the No Materialization baseline and decrease storage cost between 97 compared to the Full Materialization baseline while adding only a negligible overhead in the Spatio-Textual-Temporal Cube construction time. Moreover, approximate computation achieves an accuracy between 90 reducing query response time by 3-5 orders of magnitude compared to No Materialization.

READ FULL TEXT
research
09/28/2020

Joint Spatio-Textual Reasoning for Answering Tourism Questions

Our goal is to answer real-world tourism questions that seek Points-of-I...
research
11/11/2019

GraCT: A Grammar-based Compressed Index for Trajectory Data

We introduce a compressed data structure for the storage of free traject...
research
09/08/2017

FAST: Frequency-Aware Spatio-Textual Indexing for In-Memory Continuous Filter Query Processing

Many applications need to process massive streams of spatio-textual data...
research
04/21/2019

Storing and Querying Large-Scale Spatio-Temporal Graphs with High-Throughput Edge Insertions

Real-world graphs often contain spatio-temporal information and evolve o...
research
09/14/2020

Spatio-Temporal Top-k Similarity Search for Trajectories in Graphs

We study the problem of finding the k most similar trajectories to a giv...
research
04/07/2020

A GPU-friendly Geometric Data Model and Algebra for Spatial Queries: Extended Version

The availability of low cost sensors has led to an unprecedented growth ...
research
12/28/2018

A Compact Representation for Trips over Networks built on self-indexes

Representing the movements of objects (trips) over a network in a compac...

Please sign up or login with your details

Forgot password? Click here to reset