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    <title>Deloosh Blog - Online Surveys</title>
    <link>http://www.deloosh.com.au/Deloosh-Blog/</link>
    <description>newtelligence powered</description>
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      <dc:creator>Brent</dc:creator>
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        <p>
In this article I discuss a couple of basic principles to increase the quality of
survey data from surveys. Although there are many factors involved with
maximising survey data quality, understanding how long a survey should be, and the
order in which questions should be asked are two easily controllable factors that
can have a remarkable impact on the quality of data. 
</p>
        <p>
In a previous post I commented on a phenomenon known as "survey satisficing", which
I believe is the biggest source of error leading to misleading data in online data
collection. To review, satisficing occurs when a respondent becomes tired or unmotivated
to answer questions thoughtfully and accurately. It is well known amongst behavioural
scientists that human beings are prone to take mental shortcuts when performing tasks.
Essentially it boils down to the fact that thinking requires considerable effort,
which leads to a people taking mental shortcuts. Nobel prizes have been won understanding
this phenomenon (e.g., Kahneman and Tversky), so it is fairly robust. The bad news
is that survey satisficing leads to unreliable data. The good news is that it can
be reduced, or even eliminated, by adhering to a few principles of effective survey
design. 
</p>
        <p>
The first principle is knowing how long a survey should be. Perhaps the biggest contributor
to satisficing is survey length. This is a no brainer; have you ever tried to complete
a 40 minute survey, concentrating on every question? It is mentally exhausting, which
works well for spy interrogations but not trying to understand customer attitudes!
So, how long should a survey be to strike a balance between obtaining the right amount
of data, while not being too long? Well, I would like to give a straight answer, but
the truth is it depends. For an intervening survey where browsers are invited to complete
a survey on entering a website, a survey should only consist of a few questions.
Respondents are visiting the website for a reason (perhaps to shop), so do not have
sufficient motivation to complete more than around five questions. At the other extreme,
a survey sent out to employees may be much longer. They are motivated to complete
the survey because of their affiliation. A forty minute survey in this situation may
not be unreasonable. As a rule of thumb (suitable for general surveys emailed to opt-in
panellists), a survey should be between 20-30 questions. After this, respondents tend
to start responding inaccurately to "get it over with". 
</p>
        <p>
The second principle is knowing which order questions should be asked. Again, this
principle is linked to survey satisficing. My own research, and the research of others,
has shown that affective responses to stimuli generally decrease over time. What this
means is that people's motivations to answer survey questions thoughtfully and accurately
decrease steadily over time. However, this downward trend can be reduced by introducing
unobtrusive interruptions, or countering the slide in mental alertness with easier
questions. It is beyond the scope of this article to discuss how unobtrusive
interruptions can be used to increase survey accuracy, but I would like to offer advice
on the ordering of questions. To counter the steady decline in mental alertness, questions
should be asked from the order of most difficult (i.e., requires most thinking), through
to most easy. Open ended questions for example require considerable mental effort
-they should be asked first. Demographic information (name, job title, etc.) require
relatively little mental effort, and should be put at the end of the survey. Put specific
questions somewhere near the beginning, and general questions somewhere near the end. 
</p>
        <p>
Implementing these two principles in your survey design can have a remarkable impact
on the quality of data collected from online hosted surveys. People are not machines,
and are often not capable of concentrating for extended periods of time. This steady
decline in concentration can be countered by knowing how long a survey should be,
and in which order questions should be asked. Knowing this will ensure higher quality
responding, enabling more accurate and honest data analysis. 
</p>
        <img width="0" height="0" src="http://www.deloosh.com.au/Deloosh-Blog/aggbug.ashx?id=6fc23bff-17be-4a6b-a459-517bbc3a90a1" />
      </body>
      <title>Basic principles to increase the quality of survey data from surveys.</title>
      <guid isPermaLink="false">http://www.deloosh.com.au/Deloosh-Blog/PermaLink,guid,6fc23bff-17be-4a6b-a459-517bbc3a90a1.aspx</guid>
      <link>http://www.deloosh.com.au/Deloosh-Blog/2009/12/18/BasicPrinciplesToIncreaseTheQualityOfSurveyDataFromSurveys.aspx</link>
      <pubDate>Fri, 18 Dec 2009 06:49:18 GMT</pubDate>
      <description>&lt;p&gt;
In this article I discuss a couple of basic principles to increase the quality of
survey data&amp;nbsp;from surveys.&amp;nbsp;Although there are many factors involved with
maximising survey data quality, understanding how long a survey should be, and the
order in which questions should be asked are two easily controllable factors that
can have a remarkable impact on the quality of data. 
&lt;/p&gt;
&lt;p&gt;
In a previous post I commented on a phenomenon known as "survey satisficing", which
I believe is the biggest source of error leading to misleading data in online data
collection. To review, satisficing occurs when a respondent becomes tired or unmotivated
to answer questions thoughtfully and accurately.&amp;nbsp;It is well known amongst behavioural
scientists that human beings are prone to take mental shortcuts when performing tasks.
Essentially it boils down to the fact that thinking requires considerable effort,
which leads to a people taking mental shortcuts. Nobel prizes have been won understanding
this phenomenon (e.g., Kahneman and Tversky), so it is fairly robust. The bad news
is that survey satisficing leads to unreliable data. The good news is that it can
be reduced, or even eliminated, by adhering to a few principles of effective survey
design. 
&lt;/p&gt;
&lt;p&gt;
The first principle is knowing how long a survey should be. Perhaps the biggest contributor
to satisficing is survey length. This is a no brainer; have you ever tried to complete
a 40 minute survey, concentrating on every question? It is mentally exhausting, which
works well for spy interrogations but not trying to understand customer attitudes!
So, how long should a survey be to strike a balance between obtaining the right amount
of data, while not being too long? Well, I would like to give a straight answer, but
the truth is it depends. For an intervening survey where browsers are invited to complete
a survey on entering a website,&amp;nbsp;a survey should only consist of a few questions.
Respondents are visiting the website for a reason (perhaps to shop), so do not have
sufficient motivation to complete more than around five questions. At the other extreme,
a survey sent out to employees may be much longer. They are motivated to complete
the survey because of their affiliation. A forty minute survey in this situation may
not be unreasonable. As a rule of thumb (suitable for general surveys emailed to opt-in
panellists), a survey should be between 20-30 questions. After this, respondents tend
to start responding inaccurately to "get it over with". 
&lt;/p&gt;
&lt;p&gt;
The second principle is knowing which order questions should be asked. Again, this
principle is linked to survey satisficing. My own research, and the research of others,
has shown that affective responses to stimuli generally decrease over time. What this
means is that people's motivations to answer survey questions thoughtfully and accurately
decrease steadily over time. However, this downward trend can be reduced by introducing
unobtrusive interruptions, or countering the slide in mental alertness with easier
questions. It is beyond the scope of this article to discuss how&amp;nbsp;unobtrusive
interruptions can be used to increase survey accuracy, but I would like to offer advice
on the ordering of questions. To counter the steady decline in mental alertness, questions
should be asked from the order of most difficult (i.e., requires most thinking), through
to most easy. Open ended questions for example require considerable mental effort
-they should be asked first. Demographic information (name, job title, etc.) require
relatively little mental effort, and should be put at the end of the survey. Put specific
questions somewhere near the beginning, and general questions somewhere near the end. 
&lt;/p&gt;
&lt;p&gt;
Implementing these two principles in your survey design can have a remarkable impact
on the quality of data collected from online hosted surveys. People are not machines,
and are often not capable of concentrating for extended periods of time. This steady
decline in concentration can be countered by knowing how long a survey should be,
and in which order questions should be asked. Knowing this will ensure higher quality
responding, enabling more accurate and honest data analysis. 
&lt;/p&gt;
&lt;img width="0" height="0" src="http://www.deloosh.com.au/Deloosh-Blog/aggbug.ashx?id=6fc23bff-17be-4a6b-a459-517bbc3a90a1" /&gt;</description>
      <comments>http://www.deloosh.com.au/Deloosh-Blog/CommentView,guid,6fc23bff-17be-4a6b-a459-517bbc3a90a1.aspx</comments>
      <category>Online Surveys</category>
    </item>
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      <dc:creator>Brent</dc:creator>
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        <p>
An interesting report was released by Michael Conklin recently, with evidence speaking
to the damaging effects of poor quality data collected online. The report suggests
that any data collected from an online panel which DOESN’T use a technology to control
for systemic error or bias in the data is considered poor quality. They use a
technology called “MarketTools”, which is essentially the same as Deloosh’s Red Shield. 
</p>
        <p>
 
</p>
        <p>
The report is available here: <a href="http://www.markettools.com/pdfs/resources/WP_TSQuality_0409.pdf">http://www.markettools.com/pdfs/resources/WP_TSQuality_0409.pdf</a></p>
        <p>
 
</p>
        <p>
His results are not surprising to us, though will be perhaps surprising to many who
collect their data from firms who make no effort to ensure data integrity (interestingly,
we are not aware of any data collection firms in Australia who use technologies such
as MarketTools or red Shield). Strikingly, his results found: 
</p>
        <p>
 
</p>
        <ul>
          <li>
Even a small proportion of bad respondents caused risk of making a bad decision from
the data to increase exponentially. 
</li>
          <li>
As sample size increased, risk of making a bad decision increased even more. 
</li>
          <li>
Eliminating only one type of bad respondent actually 
</li>
          <li>
compounded the risk. They key appears to be to remove bad respondents using a wide
criteria 
</li>
        </ul>
        <p>
Fundamentally, to increase data quality, survey company needs to know: 
</p>
        <ul>
          <li>
Who actually participated in the study 
</li>
          <li>
Whether each survey taker for this study unique 
</li>
          <li>
How engaged each respondent was throughout the survey? 
</li>
        </ul>
        <p>
The key finding seems to be: If your sample has 30% invalidated people, you have 2.03
times the risk of making the wrong decision—your risk is 100% higher. Sobering
stuff given the increase in online data collection in recent times. 
</p>
        <p>
 
</p>
        <p>
 
</p>
        <img width="0" height="0" src="http://www.deloosh.com.au/Deloosh-Blog/aggbug.ashx?id=363ae0aa-f534-4785-94d2-281fff853aeb" />
      </body>
      <title>An Interesting Report Was Released By Michael Conklin Recently With Evidence Speaking To The Damaging Effects Of Poor Qualit</title>
      <guid isPermaLink="false">http://www.deloosh.com.au/Deloosh-Blog/PermaLink,guid,363ae0aa-f534-4785-94d2-281fff853aeb.aspx</guid>
      <link>http://www.deloosh.com.au/Deloosh-Blog/2009/12/18/AnInterestingReportWasReleasedByMichaelConklinRecentlyWithEvidenceSpeakingToTheDamagingEffectsOfPoorQualit.aspx</link>
      <pubDate>Fri, 18 Dec 2009 06:42:32 GMT</pubDate>
      <description>&lt;p&gt;
An interesting report was released by Michael Conklin recently, with evidence speaking
to the damaging effects of poor quality data collected online. The report suggests
that any data collected from an online panel which DOESN’T use a technology to control
for systemic error or bias in the data is considered poor quality.&amp;nbsp;They use a
technology called “MarketTools”, which is essentially the same as Deloosh’s Red Shield. 
&lt;/p&gt;
&lt;p&gt;
&amp;nbsp;
&lt;/p&gt;
&lt;p&gt;
The report is available here: &lt;a href="http://www.markettools.com/pdfs/resources/WP_TSQuality_0409.pdf"&gt;http://www.markettools.com/pdfs/resources/WP_TSQuality_0409.pdf&lt;/a&gt; 
&lt;/p&gt;
&lt;p&gt;
&amp;nbsp;
&lt;/p&gt;
&lt;p&gt;
His results are not surprising to us, though will be perhaps surprising to many who
collect their data from firms who make no effort to ensure data integrity (interestingly,
we are not aware of any data collection firms in Australia who use technologies such
as MarketTools or red Shield).&amp;nbsp;Strikingly, his results found: 
&lt;/p&gt;
&lt;p&gt;
&amp;nbsp;
&lt;/p&gt;
&lt;ul&gt;
&lt;li&gt;
Even a small proportion of bad respondents caused risk of making a bad decision from
the data to increase exponentially. 
&lt;/li&gt;
&lt;li&gt;
As sample size increased, risk of making a bad decision increased even more. 
&lt;/li&gt;
&lt;li&gt;
Eliminating only one type of bad respondent actually 
&lt;/li&gt;
&lt;li&gt;
compounded the risk. They key appears to be to remove bad respondents using a wide
criteria 
&lt;/li&gt;
&lt;/ul&gt;
&lt;p&gt;
Fundamentally, to increase data quality, survey company needs to know: 
&lt;/p&gt;
&lt;ul&gt;
&lt;li&gt;
Who actually participated in the study 
&lt;/li&gt;
&lt;li&gt;
Whether each survey taker for this study unique 
&lt;/li&gt;
&lt;li&gt;
How engaged each respondent was throughout the survey? 
&lt;/li&gt;
&lt;/ul&gt;
&lt;p&gt;
The key finding seems to be: If your sample has 30% invalidated people, you have 2.03
times the risk of making the wrong decision—your risk is 100% higher.&amp;nbsp;Sobering
stuff given the increase in online data collection in recent times. 
&lt;/p&gt;
&lt;p&gt;
&amp;nbsp;
&lt;/p&gt;
&lt;p&gt;
&amp;nbsp;
&lt;/p&gt;
&lt;img width="0" height="0" src="http://www.deloosh.com.au/Deloosh-Blog/aggbug.ashx?id=363ae0aa-f534-4785-94d2-281fff853aeb" /&gt;</description>
      <comments>http://www.deloosh.com.au/Deloosh-Blog/CommentView,guid,363ae0aa-f534-4785-94d2-281fff853aeb.aspx</comments>
      <category>Online Surveys</category>
    </item>
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      <dc:creator>Brent</dc:creator>
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        <p>
Gone are the days of cold calling a random selection of consumers during dinner time—telephone
research is not only costly, its nowadays near impossible as intolerance of unsolicited
communication in society has become the norm. Increasingly, marketers are using Internet
surveys to conduct their market research. In comparison to more traditional methods,
collecting data from online research panels is cheap and fast.Online data collection
for many Marketers seems like a silver bullet—but is it really? 
</p>
        <p>
Although the benefits of collecting data online are clear, there is concern over the
quality of data. There is some evidence to suggest that in certain conditions, data
collected online may be extremely poor. The culprit responsible for introducing unacceptable
levels of error into data collected online is the motivation given to panellists to
participate in research. Inviting a consumer to answer a few questions about laundry
powder over the phone evokes a very different motivation to respond than inviting
consumers to participate in an online survey. Many, if not all market research panellists
who participate in online surveys are motivated to participate by offers to win cash
prizes or earn points redeemable for ipods and movie tickets. Given that Internet
surveys are also convenient for the panellists, these forms of enticement invite thoughtless
responses, with motivations to participate driven not by an altruistic desire to help
firms improve their products and services, but simply by a selfish desire to get rewarded.
</p>
        <p>
Since the recent popularity of online data collection, those in the Internet survey
business have coined new terminologies to describe what we term rogue research participants.
“Straight-liners” is used to describe those who click in a straight line down a survey
page of radio buttons. “Speeders” are those who complete a ten?minute survey in under
a minute, and “survey-pros” are those who have multiple identities and responses to
increase their chances of winning a prize. Although some online research firms have
attempted to reduce this type of noise in the data, existing methods are crude and
inaccurate. If online market research companies make any efforts at all to reduce
rogue respondents, it is often impossible to separate those who are motivated by a
genuine desire participate in the research, from those who thoughtlessly click through
the Internet survey driven simply by the desire to earn more points for cash or prizes.
</p>
        <p>
The aims of our research in this area are twofold. First, we aim to determine the
extend to which data is distorted. Studies in this area have found mixed results.
We suggest contextual factors moderate the degree of systematic error leading to unacceptable
levels of noise in the data. Second, we aim to develop a robust rubric of technologies
and procedures to decrease the amount of systematic error born from the method of
collection.
</p>
        <p>
More about our research is available here: <a href="http://www.managementmarketing.unimelb.edu.au/redshield/">http://www.managementmarketing.unimelb.edu.au/redshield/</a></p>
        <img width="0" height="0" src="http://www.deloosh.com.au/Deloosh-Blog/aggbug.ashx?id=987dbe9b-14fa-4b38-82f9-9c7f1c033874" />
      </body>
      <title>Gone Are The Days Of Cold Calling A Random Selection Of Consumers During Dinner Timetelephone Research Is Not Only Costly I</title>
      <guid isPermaLink="false">http://www.deloosh.com.au/Deloosh-Blog/PermaLink,guid,987dbe9b-14fa-4b38-82f9-9c7f1c033874.aspx</guid>
      <link>http://www.deloosh.com.au/Deloosh-Blog/2009/11/10/GoneAreTheDaysOfColdCallingARandomSelectionOfConsumersDuringDinnerTimetelephoneResearchIsNotOnlyCostlyI.aspx</link>
      <pubDate>Tue, 10 Nov 2009 06:44:45 GMT</pubDate>
      <description>&lt;p&gt;
Gone are the days of cold calling a random selection of consumers during dinner time—telephone
research is not only costly, its nowadays near impossible as intolerance of unsolicited
communication in society has become the norm. Increasingly, marketers are using Internet
surveys to conduct their market research. In comparison to more traditional methods,
collecting data from online research panels is cheap and fast.Online data collection
for many Marketers seems like a silver bullet—but is it really? 
&lt;/p&gt;
&lt;p&gt;
Although the benefits of collecting data online are clear, there is concern over the
quality of data. There is some evidence to suggest that in certain conditions, data
collected online may be extremely poor. The culprit responsible for introducing unacceptable
levels of error into data collected online is the motivation given to panellists to
participate in research. Inviting a consumer to answer a few questions about laundry
powder over the phone evokes a very different motivation to respond than inviting
consumers to participate in an online survey. Many, if not all market research panellists
who participate in online surveys are motivated to participate by offers to win cash
prizes or earn points redeemable for ipods and movie tickets. Given that Internet
surveys are also convenient for the panellists, these forms of enticement invite thoughtless
responses, with motivations to participate driven not by an altruistic desire to help
firms improve their products and services, but simply by a selfish desire to get rewarded.
&lt;/p&gt;
&lt;p&gt;
Since the recent popularity of online data collection, those in the Internet survey
business have coined new terminologies to describe what we term rogue research participants.
“Straight-liners” is used to describe those who click in a straight line down a survey
page of radio buttons. “Speeders” are those who complete a ten?minute survey in under
a minute, and “survey-pros” are those who have multiple identities and responses to
increase their chances of winning a prize. Although some online research firms have
attempted to reduce this type of noise in the data, existing methods are crude and
inaccurate. If online market research companies make any efforts at all to reduce
rogue respondents, it is often impossible to separate those who are motivated by a
genuine desire participate in the research, from those who thoughtlessly click through
the Internet survey driven simply by the desire to earn more points for cash or prizes.
&lt;/p&gt;
&lt;p&gt;
The aims of our research in this area are twofold. First, we aim to determine the
extend to which data is distorted. Studies in this area have found mixed results.
We suggest contextual factors moderate the degree of systematic error leading to unacceptable
levels of noise in the data. Second, we aim to develop a robust rubric of technologies
and procedures to decrease the amount of systematic error born from the method of
collection.
&lt;/p&gt;
&lt;p&gt;
More about our research is available here: &lt;a href="http://www.managementmarketing.unimelb.edu.au/redshield/"&gt;http://www.managementmarketing.unimelb.edu.au/redshield/&lt;/a&gt;
&lt;/p&gt;
&lt;img width="0" height="0" src="http://www.deloosh.com.au/Deloosh-Blog/aggbug.ashx?id=987dbe9b-14fa-4b38-82f9-9c7f1c033874" /&gt;</description>
      <comments>http://www.deloosh.com.au/Deloosh-Blog/CommentView,guid,987dbe9b-14fa-4b38-82f9-9c7f1c033874.aspx</comments>
      <category>Online Surveys</category>
    </item>
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      <dc:creator>Brent</dc:creator>
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        <p>
Jon Krosnick, professor of communication, political science and psychology at Stanford
University, proposed a phenomenon of statistical survey satisficing to explain how
mental effort can lead to response bias (2002). The theory presupposes optimal question
answering by a survey respondent involves a great deal of cognitive effort. To ease
the effort involved, people resort to heuristic processing (cutting corners) to answer
questions. With weak satisficing, a respondent tends to execute all the cognitive
steps required to optimize their responses, but in an incomplete way biased through
heuristic processing. With strong satisficing, the respondent offers responses that
on the surface may seem reasonable, but may actually have occurred with minimal memory
search or information integration.Antecedents influencing survey response satisficing
include the ability and motivation of the respondent, and to the difficulty of the
task (questionnaire/instrument evaluation). The consequences of satisficing include:
choosing “no-opinion” response options when one of the other options are true, indifferent
responding to multiple objects on a response scale, and acquiescent responding. Indeed,
our results in Project Red Shield suggest abnormal responding consistent with these
effects. We believe response satisficing is an important consideration in the design
and collection of data from online survey.
</p>
        <p>
Krosnick, J. A., Holbrook, A. L., Berent, M. K., Carson, R. T., Hanemann, W. M., Kopp,
R. J., Mitchell, R. C., Presser, S., Ruud, P. A., Smith, V. K., Moody, W. R., Green,
M. C., &amp; Conaway, M. (2002). The impact of “no opinion” response options on data
quality: Non-attitude reduction or an invitation to satisfice? Public Opinion Quarterly,
66, 371-403. 
</p>
        <img width="0" height="0" src="http://www.deloosh.com.au/Deloosh-Blog/aggbug.ashx?id=ebd19a12-8381-4c53-84bb-758ce111c8b8" />
      </body>
      <title>Jon Krosnick Professor Of Communication Political Science And Psychology At Stanford University Proposed A Phenomenon Of S</title>
      <guid isPermaLink="false">http://www.deloosh.com.au/Deloosh-Blog/PermaLink,guid,ebd19a12-8381-4c53-84bb-758ce111c8b8.aspx</guid>
      <link>http://www.deloosh.com.au/Deloosh-Blog/2009/08/12/JonKrosnickProfessorOfCommunicationPoliticalScienceAndPsychologyAtStanfordUniversityProposedAPhenomenonOfS.aspx</link>
      <pubDate>Wed, 12 Aug 2009 07:39:50 GMT</pubDate>
      <description>&lt;p&gt;
Jon Krosnick, professor of communication, political science and psychology at Stanford
University, proposed a phenomenon of statistical survey satisficing to explain how
mental effort can lead to response bias (2002). The theory presupposes optimal question
answering by a survey respondent involves a great deal of cognitive effort. To ease
the effort involved, people resort to heuristic processing (cutting corners) to answer
questions. With weak satisficing, a respondent tends to execute all the cognitive
steps required to optimize their responses, but in an incomplete way biased through
heuristic processing. With strong satisficing, the respondent offers responses that
on the surface may seem reasonable, but may actually have occurred with minimal memory
search or information integration.Antecedents influencing survey response satisficing
include the ability and motivation of the respondent, and to the difficulty of the
task (questionnaire/instrument evaluation). The consequences of satisficing include:
choosing “no-opinion” response options when one of the other options are true, indifferent
responding to multiple objects on a response scale, and acquiescent responding. Indeed,
our results in Project Red Shield suggest abnormal responding consistent with these
effects. We believe response satisficing is an important consideration in the design
and collection of data from online survey.
&lt;/p&gt;
&lt;p&gt;
Krosnick, J. A., Holbrook, A. L., Berent, M. K., Carson, R. T., Hanemann, W. M., Kopp,
R. J., Mitchell, R. C., Presser, S., Ruud, P. A., Smith, V. K., Moody, W. R., Green,
M. C., &amp;amp; Conaway, M. (2002). The impact of “no opinion” response options on data
quality: Non-attitude reduction or an invitation to satisfice? Public Opinion Quarterly,
66, 371-403. 
&lt;/p&gt;
&lt;img width="0" height="0" src="http://www.deloosh.com.au/Deloosh-Blog/aggbug.ashx?id=ebd19a12-8381-4c53-84bb-758ce111c8b8" /&gt;</description>
      <comments>http://www.deloosh.com.au/Deloosh-Blog/CommentView,guid,ebd19a12-8381-4c53-84bb-758ce111c8b8.aspx</comments>
      <category>Online Surveys</category>
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