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What's New in
Cybertalk?
by Jean Gora
March 2001
Note: CyberTalk is a column that
appears monthly in LOMA's Resource, the magazine for insurance and financial
services management. To see more contents of the magazine and to see how to
subscribe, click on RESOURCE MAGAZINE.
Search Engines
Like everything else on the Internet, the world
of search engines is the scene of a tremendous amount of innovation and
competition. As anyone who has ever done an Internet search knows, the problem
is not to find information; the search engines find more than a single human
being could assimilate in a lifetime. Rather the problem is finding relevant
information. For insurance company employees, the problem is finding information
relevant to their jobs.
This article explores one small aspect of this
problem—whether it is possible for such an employee to find useful, targeted
information about underwriting preferred risks easily by running Internet
searches. Assume that this employee simply types in the phrase
"underwriting preferred risks" and does not enter quotation marks or
any other Boolean operators. To find the solution, CyberTalk visited 34 leading
Internet search sites and ran the same search through each of them. The table in
this column shows the first five search results obtained from each site. (Click
here to see the table).
Key Conclusions
There are several key conclusions from this query.
It is far from easy for this employee to find
relevant, targeted information on underwriting preferred risks.
A motivated employee with time to devote to searching and in-depth examinations
of Web sites can find it. An employee who is pressed for time will not be able
to find it.
Insurance agents and brokers run the majority of
the insurance sites identified in the searches. Additionally,
the information presented on their sites is targeted at either a prospect for
insurance or another agent or broker. It is not targeted at insurance company
employees who want to learn more about underwriting preferred risks.
It may take too much work. Even
when the search results identify insurance sites that have some information
about underwriting preferred risks, they often list links to pages that do not
mention the topic and give no indication of where on the site information about
the topic can be found. In other words, the information may be available on the
site, but the employee would really have to work to find it. Usually the search
engine delivers links to the welcome page of Web sites. Many welcome pages are
low on content. In the case of sites run by insurance agents or brokers, there
is one exception to this generalization. Links to the Americaquote Insurance
Agency go directly to a page discussing preferred risks.
Some search sites deliver ridiculous results.
For example, the fourth result delivered through the Altavista site is a link to
the Turkestan section of the Central Asia discussion list. The first result
delivered by Suite 101 is a link to a site on diversified learning; the site
focuses on methods of teaching gifted students.
Some sites confuse queries with job searches. Many
search sites appear to assume that a person who is looking for information on
underwriting preferred risks is looking for an underwriting job. The search
results deliver many links to insurance recruiters.
Many sites completely misinterpret the query. Even
when some search sites correctly conclude that the searcher’s query concerns a
financial topic, they misjudge the area of finance concerned because they appear
to focus on one word in the phrase "underwriting preferred risks." For
example, because the term "underwriting" can apply to investments, the
third result from AOL Search is a link to a venture capital company. Altavista
and Oingo both deliver links to articles about hedge funds. The term
"risk" triggers a lot of links to various risks management issues that
have nothing to do with underwriting preferred risks.
Pay-for-listing and algorithm juggling can result
in bad matches. It is possible for site
operators to structure their sites in ways that make them appear high on the
list of results for searches on specific terms. Some pay the search engine for
high placement. Others deduce the search engines’ algorithms and placement
criteria and structure their sites accordingly. For example, some search engines
consider the URL in placement. The URL of the Guide One Insurance Company is
www.preferred-risk.com. Fidelity Investments, which runs the Insurance.com Web
site, has successfully discovered how to be listed prominently by a number of
the search engines reviewed here. It appears among the top five on the FindWhat,
GoTo, Hotbot, iWon, Ixquick, LookSmart, NBCi, QBSearch, and Sprinks search
results.
Some sites are better than others. Several
search sites do better than the others at delivering links to sites that have
information on preferred risk underwriting that would be relevant to insurance
company employees. Google and Yahoo (which uses the Google search engine)
deliver links to a SwissRe study on preferred risks in life insurance; the study
concerns European data, but the discussion would be useful to all practitioners.
They also deliver links to material on preferred risks by the Canadian Society
of Actuaries and to material on the subject posted on the site of American
United Life Insurance. The Northern Light site delivers a link to a Best’s
Review article on underwriting preferred risks; however, you have to pay a
fee to access the article. It also delivers a link to an insurance dictionary
offering a definition of preferred risks.
PDF searching can result in better matches. One
reason Google can successfully find relevant insurance content so effectively is
that it has the ability to search PDF files. Many sites offering serious
business content publish long documents on the Web in PDF format.
Natural language query can help. The
sites such as Google and Northern Light, which deliver relevant information,
clearly have some ability to handle natural language queries because they
interpret the entire phrase "underwriting preferred risks" and not the
individual words in the phrase by themselves.
Experts can be good if they know about insurance.
Some of the search sites that claim to rely on human experts clearly do not yet
have insurance experts. One exception is Ask.me, which delivered an accurate
result (see the table) although one targeted at a prospective buyer of
insurance.
In sum, an insurance company employee who wants
to find out about preferred risk underwriting had better chose his search engine
carefully. Or better yet, he needs to know the URLs of insurance sites that
offer relevant information.
Some Background on Search Engines
Search engines are different from search sites, but it is easy to confuse the
two. The search engine actually performs the search. The search site
incorporates a search engine that allows one to perform searches. Thus, many
well-known search sites use search engines developed by others. Thus, for
example, the HotBot search site uses the Lycos search engine. The table below
distinguishes between the two where that information is readily available.
Because more than one search site uses the same search engine or the same
back-end search service, many search sites deliver the same results.
The search engine market is evolving very rapidly
as the developers of search engines attempt to add features that deliver more
relevant results than are available through key word searches. At least four
different Internet sites track developments in the search engine market. They
are Search Engine Watch (www.searchenginewatch.com), Search Engine Guide (www.searchengineguide.com),
Search Engine Showdown (www.searchengineshowdown.com), and Traffick – the
Portal Portal (www.traffick.com). They provide much more useful information that
can be provided in a short article. Those in the market for a search engine or
those hoping to build traffic on their Web sites by getting better treatment
from search engines will find these sites enormously useful.
Andrew Goodman, who writes for the Traffick site
mentioned above, groups search engines in six categories on the basis of how
they deliver relevant information.
Popularity engines
show the most frequently requested results first. They assume that if people
click through to a site frequently and remain on that site for a long time, they
are finding that site relevant. This approach has several obvious flaws in that
it may create self-fulfilling prophecies; a link that shows up first may attract
visitors, whose visits cause the site to be ranked first. The fact that some one
remains at a site long does not necessarily mean that person is finding what he
wants. He may be spending time looking.
Meta search engines
search multiple other search engines and generate site lists on the basis on an
aggregate key word relevance score. Some consolidate the results; some do not.
Thus, if the underlying search engines deliver useless information, so with the
meta search engines. Using a meta search engine is certainly faster that going
from one search engine to another in sequence.
Meaning-based search engines
use their own lexicons and allow users to specify the intended meaning of
the words. They may also analyze the relationships among words in a document.
Natural-language search engines
allow the user to pose questions the way he would if he were talking to
another person. It performs searches based on the phrases incorporated into the
questions.
Expert guide sites
use people to classify information. Some even do it in real time. If an
expert is available in one’s area of interest, the information may be
relevant.
Pay-per-click search engines
allow marketers to pay for their search engine rankings. The end result may
or may not be relevant information from the user’s point of view.
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