Resumen:
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[EN] The aim of the first part of presentation is to tap into the potential of new web
data sources, which will have the potential to be integrated in the Web
Intelligence Hub, developed by Eurostat. Parallel to the ...[+]
[EN] The aim of the first part of presentation is to tap into the potential of new web
data sources, which will have the potential to be integrated in the Web
Intelligence Hub, developed by Eurostat. Parallel to the exploration of the
data sources, we aspire to produce experimental statistics, using these new
web data sources, given that they meet the quality criteria.
The presentation will delve deeper into Work Package 3, part of the
European Statistical System Collaborative Network (ESSnet) Web
Intelligence Network (WIN) project, dedicated to the exploration of nontraditional data sources for official statistical production.
Work package 3’s activities are divided into six use cases, each having
distinct characteristics and specific goals:
• Use Case 1 aims to explore new data sources and monitor the real estate
market.
• Use Case 2 aims to derive early estimates of construction activities,
pertaining to both already built and planned buildings, based on real estate
web portals.
• Use Case 3 aims to collect data about online prices of household
appliances and audio visual, photographic and information processing
equipment by web scraping of online shops and at a later stage compare the
data with scanner data for the shop’s sales.
• Use Case 4 aims to develop new indices for tourism statistics, using the
data from booking portals, air traffic portals, travel agencies portals and
portals related to quality of life.
• Use Case 5 is concentrated on mass web scraping, primarily for the
enhancement of the quality of the business register via linking URLs of
enterprises and predicting main economic activity codes (NACE)
• Use Case 6 aims to explore the use of publicly available traffic camera data
in order to produce new indicators. In this use case a peculiar data source is
used – pictures from traffic cameras and induction loops.
Use cases 1-4 share similar characteristics in terms of data sources and
expected experimental indicators and adhere to pre-defined process steps in
compliance with Big data life cycle, which include “New data sources
exploration”, “Programming, production of software”, “Data acquisition
and recording”, “Data processing”, “Modelling and interpretation” and
“Dissemination of the experimental statistics and results”. Use cases 5 and 6
take a slightly different approach due to their extraordinary data sources and
do not adhere to the aforementioned process steps.
During the first project’s year, the Work package 3 achieved meaningful
results, such as a Checklist used as a tool for assessment and justification of
web data sources, defined a set of mandatory and optional variables to be
extracted from the data sources, sets of minimal indicators, based on the
mandatory variables, successfully set up and tested their working
environment and software solutions for the upcoming data collection,
literature review focused on URL finding methodology and tools and the use
of business websites to predict economic activity of enterprises, preparation
of training and tests sets and accompanying methodology for URL finding,
preparation of the upcoming NACE prediction and classification, exploration
of the available assessment of the model results, implementation of Machinelearning pipeline for publicly accessible traffic camera data.
We are also scheduled to begin testing of Eurostat’s Web Intelligence Hub
for specific use cases from our Work package, which volunteered in the
endeavor.
While we have successfully implemented our initial planned activities for the
first project year we continue our work, constantly monitoring the available
resources, arising issues and quality of the data, which is to be collected and
processed during the second project year.
The different use cases have already encountered potential and expected
issues like the possible changes in the source of web data structure and web
site changes, checks for legal and copyright constraints, non-standard
variables, mechanisms blocking extraction of data (e.g. javascript, captchas,
etc), viability of training and test sets for both URL finding and NACE
prediction, difficulties when comparing results with other partners, since
NACE code classification is knowledge-intensive and language-specific sources have to be used, regular update of the data source. Due to the
peculiar data sources for some use cases we have also encountered
unsolvable issues like weather variation (e.g. snow,rain, darkness). Some of
the issues have been solved, while others still remain.
A Case Study for innovative tourism statistics aims to show the achievements
of two projects: ESSnet Big Data II and ESSnet WIN concerning the use of
unstructured data sources in the field of tourism.
The work in the Big Data II project started with an inventory of data sources
related to tourism statistics, which can be used for research of tourist
accommodation establishments as well as for estimating tourist traffic and
related expenditures. The VisNet tool was developed to visualise the links
between the identified sources.
The gathering of data from digital sources required the preparation of a
scalable solution for data retrieval using web scraping techniques. The
developed author's method allowed for continuous and non-invasive
extraction of data from selected accommodation booking portals.
The process of integrating statistical databases with data derived from web
scraping required the development of a fully automated innovative tool,
which unified the structure of identification data and assigned them
geographical coordinates. The preparation of appropriate structures allowed
the implementation of methods of combining data from different sources.
The project also developed a methodology for estimating the volume of
tourist traffic and tourist expenditures using spatial-temporal disaggregation
methods or the method of flash estimates of accommodation establishments.
As a result of the work carried out, a prototype of the Tourism Integration
and Monitoring System (TIMS) was prepared, together with dedicated micro
services, which will support statistical production in the area of tourism
statistics and assist in monitoring changes in the tourism sector.
The continuation of the work initiated in ESSnet Big Data II is the ESSnet
WIN project, in which new methods for assessing the quality of external data
sources have been introduced and web scraping has been expanded to other
types of portals related to tourism. The main objective of the project is to
develop new indicators, which will be an integral part of the developed
prototype.
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