Aposentu: A Social Semantic Platform for Hotels
Gavina Baralla
1
, Simona Ibba
1
and Riccardo Zenoni
2
1
Department of Electrical and Electronic Engineering, University of Cagliari, Piazza D’Armi, Cagliari, Italy
2
Logica Solution srl, Via Giacomo Benucci, 30, Terni, Italy
Keywords:
Tourism, Complex Network, Sentiment Analysis, Social Semantic Tool, Hotel Revenue Management.
Abstract:
Tourism business has become competitive and dynamic and it is essential to adapt both customers’ satisfaction
and to market’s changing needs. A hotel owner faces three big challenges: he must look to attract new guests
to its location, manage his hotel in the best performant way and has to adapt their online marketing strategy
using several tools such as online travel agencies (OTA) or meta-search engines website or other players from
the sharing economy. All these channels can complicate the hotelier’s life, making the tourism market and
by removing in some areas the prices according to the seasons and the availability. In addition, consumer
generated content (CGCs) influence the market and the revenue management making the web reputation even
more important. This paper presents Aposentu, an innovative tool which integrates all the required components
in order to successfully manage the hotel. The platform will be cloud computing technology based and it will
show a proper dashboard with a lot of innovative functionalities. By using semantic tools, sentiment analysis,
complex network metrics, the platform will allow the hoteliers to become more competitive in the tourism
industry. Moreover, administrative complexity will be reduced and that will facilitate the management of
accommodation.
1 INTRODUCTION
Running and managing a hotel is a complex task. It
requires the ability to be flexible, the capability to un-
derstand the context which they are doing business in
and to recognize the need of the travelers who look for
the best possible accommodation. Furthermore high
competition is one of the main challenges in this sec-
tor especially in those tourist destinations where, in a
small area, you can find a lot of hotels.
Over the years a lot of software solutions have
been implemented in order to replace old-fashioned,
paper-based methods and to automatize hotel tasks
such as booking, front-end and back-end office activ-
ities, marketing practices, accounting and so on. That
kind of tool is well known as Property Management
System, PMS and the first implementation dates back
to 1980.
Nowadays, tourism business has become compet-
itive and the use of appropriate dynamic tools is es-
sential to keep up with the time and to make the dif-
ference compared with competitors. According to a
recent statistic (Global Property Management Soft-
ware Market Research Report 2017), the PMS market
is expected to increase by 6,99% for the period 2017
through 2022. Currently this industry is highly frag-
mented in terms of proposed solutions, often PMS are
not web-oriented (because they had been developed
before the coming of the Internet) and sometimes old
tools have been adapted to web functionality with bad
performance and by using different standards.
Tourism market is increasingly becoming web
based with the development of huge numbers of ap-
plications and websites focusing on reservation and
reputation systems. Nowadays the tourist is used to
looking for reviews before booking or buying some-
thing, Ye et al. (Ye et al., 2011) investigated the influ-
ence of user-generated content to hotel online book-
ing. Gretzel et al. (Gretzel and Yoo, 2008) analyzed
the use and the impact of online travel reviews written
by consumers, they called these reviews Consumer
Generated Contents (CGCs). Furthermore, Kim et al.
(Kim et al., 2015) pointed out the importance of us-
ing social media reviews in order to manage the hotel
performance.
In addition, the online Travel Agency, OTA, provide
B2B2C services in which both the owner of the web-
site and sellers offer their products. The customer
benefit sfrom this marketplace that offers multiple
kind of online booking services which help users to
Baralla G., Ibba S. and Zenoni R.
Aposentu: A Social Semantic Platform for Hotels.
DOI: 10.5220/0006511702690274
In Proceedings of the 9th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management (KDIR 2017), pages 269-274
ISBN: 978-989-758-271-4
Copyright
c
2017 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
find a hotel, buy a ticket for air travel, rent cars. At
the same time these services are oriented to different
client typologies and provide competitive prices.
In this complex scenario the hoteliers need an effi-
cient software which include some different applica-
tions that often are proposed by several online ser-
vices. This multiplicity could amplify further the
work of hotelier. In order to resolve this complex-
ity we propose Aposentu, an innovative dashboard for
managing a hotel. Aposentu is the sardinian name
of the welcoming room, often dedicated to guests, in
typical sardinian house. This room represents the first
form of reception in Sardinia.
Aposentu is a smart dashboard, completely cloud-
based on semantic tools, sentiment analysis and in
which we want to apply complex network metrics,
the platform will help hoteliers to meet tourists needs,
improve their economy facing the dynamic changing
tourist environment.
The paper is structured as follows: Section 1
provides an introduction with papers motivation,
Section 2 presents related works, in Section 3 the
proposed approach is shown. Section 4 describes the
platform architecture, finally conclusions and future
works are given in Section 5.
2 RELATED WORKS
In the last years we withnessed the development of
many applications based on semantic techniques and
projected to improve the tourist market.
An important overview of the use of knowledge
management techniques and the applications such an
approach to a tourism sector is presented by Cooper
(Cooper, 2006). He discussed how to transform in-
formation and data into capabilities for the tourism
sector.
However Shaw et. al, (Shaw et al., 2011) pre-
sented the concept of service-dominant logic and
showed how important it is to involve hotel customers
in the process of co-production and co-creation of
services. Ontologies are a useful tool to define the
relationships among concepts in a specific domain.
For instance Hontology (Chaves et al., 2012) is a
multilingual ontology for the accommodation sec-
tor that reuses some concepts extracted from Dbpe-
dia.org
1
and Schema.org
2
. Hontology could be used
in many applications that include information visuali-
sation and extraction or text annotation in an accomo-
dation context.
1
http://wiki.dbpedia.org/
2
http://schema.org/
The use of intelligent agents and artificial intel-
ligence allows the development of personalized so-
lutions. This assumption is the basis of Sem-Fit
(Garc
´
ıa-Crespo et al., 2011), a semantic hotel recom-
mendation system that, using fuzzy logic techniques,
takes into account consumers’ experience. However
Zhang et al. (Zhang et al., 2016) presented a senti-
mental analysis tool based on graph method, which
is applied for semantic classification of the user re-
views collected from e-commerce websites. This ap-
proach can be joined to the typical metrics of complex
network. In order to identify competitive sets for ho-
tels useful to help hotels better position themselves
based upon eWOM (electronic word-of-mouth mes-
sages) Xiang et al. (Xiang et al., 2017) classified ho-
tel properties based on guest experiences along with
satisfaction ratings in hotel online reviews. The re-
sults of this study described the structure of tourism
industry.
Finally the system proposed by Tatiya et al.
(Tatiya and Vaidya, 2017) generates recommenda-
tions taking into account the categorical preferences
of present user and the feedback/comments of the past
users.
In our work we analyze the consumers’ experience
point of view and included in this study also all data
from main platforms of booking.
3 THE PROPOSED APPROACH
New web channels have made tourism market ex-
tremely competitive sometimes erasing season-based
prices and accommodation availability often caus-
ing price dispersion and differentiation also between
OTAs (Clemons et al., 2002). Conversely, a hotelier
decides room rates only on the basis of its experience.
The proposed platform aims at providing a tool, mod-
ular structured and cloud computing based, able to in-
tegrate different functionality and services.
The system will calculate daily a competitive price for
the offered services by considering different factors:
(i) tourist numbers, (ii) competitors average price, (iii)
web reputation, (iv) fixed and variable costs, (v) hotel
rating, (vi) reservation frequency.
We want this tool to be a solution to the on-going
management hotel issues by integrating innovative
marketing perspective with web reputation aspects.
By using a smart dashboard a hotelier will have a
single interface to monitor all web channels and at
the same time he will be able to continually supervise
sales record.
The innovative system will allow the management
of internal data and their integration with external,
i.e. data competitors related to the same temporal pe-
riod and retrieved by web scraping techniques or data
coming from social networks.
The information obtained will be useful to design ad-
hoc advertising campaigns. The system will be imple-
mented following a modular architecture and it will
have:
a dashboard which integrates in a flexible way all
useful information according to the user profile
and his role and capability;
a web scraping algorithm to pinpoint data com-
ing from other booking platforms; but also a mod-
ule to manage and gather internal data. Informa-
tion will also consumer generated content derived
from web reviews;
a Business Intelligence tool to analyze aggregated
information and based on a complex network sys-
tem;
a Booking Engine to generate dynamic pricing;
a tool to evaluate the web reputation and based on
sentiment analysis techniques;
a contextual advertising module, it will be able to
record and evaluate the customer behaviour dur-
ing the web navigation (i.e. visited pages, naviga-
tion path, purchase deals etc.) in order to made an
ad-hoc targeted campaign;
a module for social network integration.
This kind of system will allow to increase the ho-
tel turnover, manage web reputation, take over new
tourist market and become competitive.
4 PLATFORM FEATURES
We propose a modular management platform in-
tended for hoteliers and cloud based, it aims to com-
bine different services in one solution. The system
will consist of four components:
a social semantic tool to organize tourist and ac-
commodation terminology in a semantic way;
a contextual advertising module connected with
social networks integrated with the booking plat-
form;
a business intelligence level will allow the com-
parison between other competitors in the same ge-
ographical area;
a web reputation tool to evaluate users’ opinions
and hotel reviews.
All functionalities will be usable through a properly
implemented dashboard according to the user profile.
Figure 1: Architecture of Aposentu.
4.1 Social Semantic Tool
An efficient touristic web service needs suitable tools
to improve data management and knowledge sharing.
However a formal categorization of contents could be
insufficient to interpret the user instances.
A dynamic business network could be contribute
to the evolution of an agile and collaborative book-
ing system in which the contents inserted by users
could be a sound basis to interpret better what cus-
tomers want. For instance a folksonomy allow a better
customer-centric view of a hotel’s proposition. How-
ever this popular categorization cannot be conceived
without a formal categorization that includes its capa-
bility to be trustable and a right interaction and rela-
tionship between the service components as the meta-
data of an ontology (Johnston, 2007).
Consequently Aposentu will combine tags that char-
acterize Social Web applications with an ontology to
better describe the resources specific to Semantic Web
in the context of tourism.
Our system will provide a semantic classification
of data derived from main touristic websites, book-
ing platform including the customers comments. This
categorization will be achieved by using a double-
axis. The horizontal axis to classify consumer gen-
erated contents (CGCs) and the vertical axis in order
to solve word-sense disambiguation. Therefore we
want to integrate a formal categorization as a taxon-
omy with a folksonomy.
In order to achieve a right classification, the data
structure of all related information will be examined
and a new innovative semantic model for tourist con-
text will be studied. The internal data or managing
information will be presented with structured or semi-
structured data to which a hierarchic classification can
be applied. Instead in order to manage the UGCs we
will use a folksonomy and we will choose the combi-
nation of appropriate methodologies. i.e. the use of
tag cloud (Sinclair and Cardew-Hall, 2008), the ex-
traction of terms to enrich an existing classification or
to develop a new one (Alruqimi and Aknin, 2017) or
with a social tag (Cantador et al., 2011).
We will also consider lexical database such as
WordNet
3
to fix word-sense disambiguation.
The innovative technology will also be applied to the
connection between similar accommodation and in
the same local area in order to analyze the impact of
competitors but also the local context as well.
4.2 Targeted Advertising
A successful hotel offer has to take into account the
recent changes of Programmatic Advertising across
new media (Dawson and Lamb, 2016).
The social media tools provide an effective contextu-
ally targeted advertising solution where the opinion
of a friend or other trusted web source, indicates to
users new, appropriate and optimal products or ser-
vices. A module of user profile-based marketing em-
ploys information technologies in order to recognise
the wishes of people.
An innovative tourist system has to include tools
to match the needs to the context within and around
their users (Buhalis and Foerste, 2015).
Many real time information, from mobile devices can
influence the tourist experience and help the hotelier
to understand what its prospective clients want.
This kind of system allows to revolutionise the ho-
tel offers and to create products and services dynami-
cally based on consumers’ needs.
In Aposentu we also want to include a software
module that connects the booking platform with the
most popular social networks. We will develop an al-
gorithm, based on semantic technologies to achieve a
contextually targeted advertising system.
4.3 Business Intelligence and Complex
Network
Business intelligence (Wood, 2001) models have the
capacity to study business information in order to sup-
port market management decisions. He considered
the importance of analysis of the specific context in
which a product shall be placed.
Furthermore Migu
´
ens et al. (Migu
´
ens and
Mendes, 2008) discussed how the worldwide tourist
arrivals, create a heterogeneous and directed com-
plex network in which weighted and directed net-
work measurements on its topological and weighted
3
https://wordnet.princeton.edu/
structure are really important to understand the tourist
flows.
In Aposentu even a Business Intelligence module
will be implemented. The features of all accommo-
dation of the same level of the hotel of interest will
be analysed. In this way the impact of competitors in
a particular geographic area will be possible to find.
A scraping tool will periodically download the prices
offered by the competitors. This information will
be processed by the business intelligence algorithm
to suggest the hotelier the best price for his offers.
We want to use metrics and measures from complex
networks to evaluate the hotel offers in the territory
through providing aggregated information about the
nature, extension and articulation of these.
The application, which will compile data collected
with special scraping algorithms, will allow the man-
agement of the information associated with each com-
petitor according to a complex network concept based
paradigm. This model will integrate ”punctual” infor-
mation, as relative to the single hotel or to the single
offer, with another type of information, of topological
nature, relating to the connections existing between
the various hotels.
These implementation, through the analysis of the
collected information, will also generate a complex
network in which the hotel offers and their reciprocal
connections will be highlighted (aggregated and with
different levels of granularity).
This representation will be visual, schematic, eas-
ily understandable, and will allow to investigate the
complex relationships of hotels.
4.4 Web Reputation and Sentiment
Analysis
User opinions and reviews on hotels on the web are a
fundamental data source in in the booking of a room.
The hotel owner must know these assessments for the
better management of resources.
We are going to include in our project a tool which
collects all opinions from main booking systems, cat-
egorizes these comments and shows information in
the best understandable way.
In our platform we want to develop a web rep-
utation tool that analyzes comments on the biggest
sites of booking (TripAdvisor, Google Reviews, Ex-
pedia, Booking, AirB&B) in order to understand the
common opinion about offers and hotel features of ac-
commodation. This component has two different pur-
poses: it monitors the use of unfair tactics on com-
ments and allows the system to show users exactly
what they wish. In this way it’s possible to keep a
high standard of service. Therefore language process-
ing algorithms will be studied.
These algorithms will interact with the text in-
serted by users in all booking platforms and, as a re-
sult of queries, will show only the offers related to ac-
commodation with appropriate characteristics or ser-
vices.
The positive or negative view of a hotel offer, the
intensity and frequency of that opinion, the emotion
with which the assessment is expressed and the rele-
vance of that deal in comparison with its geographical
area will be analysed.
5 CONCLUSIONS
This paper outlines the implementation of Aposentu,
an innovative dynamic platform, cloud based turned
at hoteliers. The system aims to integrate different
type of essential services to become competitive in
the tourism market and to keep up with time.
By using Aposentu an hotelier will successfully
manage the hotel to optimise the revenue manage-
ment. The proposed platform will also be able to
discover the users’ opinion in order to monitor and
improve web reputation.
Thanks to use of complex network metrics the sys-
tem will evaluate competitors’ offers and will provide
a useful business intelligence tool.
In order to better understand customers’ needs we
proposed a social semantic categorization that com-
bine tags with an ontology to better describe the re-
sources specific to tourism domain.
Furthermore, by using the targeted advertising
tool new guests can be attracted. Given the dynamic
context, the presented system fits well with the new
internet marketing strategies. In fact all listed func-
tionalities will be implement according to a modular
architecture system and, depending on the needs, new
ones can be added as well.
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