Interactive Session : Technology
WHAT CAN
BUSINESSES LEARN FROM TEXT MINING
1.
What challenges does the increase in unstructured data present for
businesses?
Text mining enables many companies to respond to their customers satisfaction surveys, and web mining enables many web search engines to facilitate collecting
data that people need to be more profitable. Now, a huge amount of unstructured
data is distributed by these systems. A manager is able to use this system and
make an accurate decision for unprecedented cases. information Business
intelligence tools deal primarily with data that have been structured in
databases and files. However, unstructured data, mostly the
kind
of data we generate in e-mails, phone
conversations,
blog postings, online customer surveys,
and tweets are all valuable for finding patterns and trends that will
help employees make better business decisions.
Text mining
tools are now available to help businesses analyze these data. These tools are
able to extract key elements from large unstructured data sets, discover
patterns and relationships, and summarize the information. Businesses might
turn to text mining to analyze transcripts of calls to customer service centers
to identify major service and repair issues.
2, How does text-mining improve decision-making?
Text mining system enables
airlines to rapidly extract customer sentiments, preferences, and requests for
example, when the airlines suffered from unprecedented levels of customer
discontent in the wake of a February ice storm in 2007. Managers were concerned
about their reputation degrading but there had been no means to glean their
responses without text mining. Fortunately, they could make decisions and
figure out a lot of measures to respond to customers’ discontent. The reason is that text mining facilitates
gleaning from many unstructured text data and compiles them. This data wouldn’t
be analyzed by decision making systems like MIS and DSS because text mining is
not structured data. Text mining is indispensable for decision making of
unstructured data. text mining improve in decition making by
Offering unique insights into customer behaviour and attitudes.
3,What
kinds of companies are most likely to benefit from text mining software?
Explain your answer.
In the past, only government and large companies tend to use text mining
system but now, text mining system can be geared towards small businesses.
Restaurants, hotels, supermarkets etc. are applying the system and able to make
a decision as well as earn profits. Every company is able to use both
structured data and unstructured data. Above all, internet search engines like
Google and Yahoo are doing good business because they used AdWord and AdSence
which efficient advertising system is kind of web mining.
4, In what ways could text mining potentially
lead to the erosion of personal information privacy? Explain.
Nowadays, companies tend to use and manage personal information for their
business. Mobile phone companies manages huge amount of privacy data as
structured data. However sometimes hacker invade this data and abuse it.
According to text mining, some companies use personal information as
unstructured data which is gathered from survey or questionnaires. This case is
different from structured data because unstructured and mining data is not
provided by customer. There is a risk to occur some unprecedented accidents.
Interactive
Session : Organizations
CREDIT
BUREAU ERRORS – BIG PEOPLE PROBLEMS
1.
Assess the
business impact of credit bureaus’ data quality problems for the credit
bureaus, for lenders, for individuals.
The business
impact of credit bureaus' data quality problems for the credit bureaus, for
lenders, for individuals is that businesses lease and promote people based on
the credit bureaus' data. It said that one of the three entrepreneur look at
the credit bureaus' data when leasing and promoting workers. This is the
business impact of credit bureaus' data quality.
2.
Are any ethical issues raised by credit bureaus’ data
quality problems? Explain your answer.
Yes, there are
ethical issues raised by credit bureaus' data quality problems, because some
people fill out their applications wrong on purpose so other people get their
bad credit. That is ethically wrong to do that. More and more people are
receiving bad credit that they don't even deserve. These are the ethical issues
raised by credit bureaus' data quality problems.
3. Analyze the management, organization, and technology factors responsible
for credit bureaus’ data quality problems.
The management
factor responsible for credit bureaus is data quality problem is that they need
to manage the credit for people better than they have even though it said they
can't do it accurately for 3.5 billion people. The organization factor is that
they need organize the data better and keep it updated so that people aren't
receiving bad credit undeservingly. The technology factor is that the
technology needs to keep all the data updated and make sure the technology is
up to date as well.
4. What can be done
to solve these problems?
The steps to
solve the problem is to make sure the information of lenders are up to date and
correct. There will be some mistakes, but if you keep a closer eye on the
credit data, you can minimize the problem. Another possible solution is to be
more strict on the requirements to take out a loan, so lenders actually make
sure they have good credit before taking out a loan. This will minimize the
problem of people with bad credit, which in cause will minimize the problem of
bad credit going to the wrong people.
Member : Riza riyanti ( C1L11020)
Findy verliana (C1L011029)
Mira Nur fajar (C1L011030)
Ista Oktina (C1L011031)