Hy-vee.com Traffic and Demographic Statistics by Quantcast

 

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Grocery Shopping Network

Monthly Uniques 1.9M US 2.0M Global

hy-vee.com

Monthly Uniques 438.3K US 445.7K Global
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  • Quantified

    Directly Measured Data

Profiles employee-owned corporation operating more than 200 retail stores in seven Midwestern states. Company history, career opportunities, weekly specials, store locations, and contacts. [Description from dmoz]

Give Hy-Vee a high five for being one of the largest privately owned US supermarket chains, despite serving some modestly sized towns in the Midwest. The company runs about 225 Hy-Vee supermarkets in states including Illinois, Iowa, Kansas, Minnesota, Missouri, Nebraska, and South Dakota. About half of its supermarkets are in Iowa, as are most of its 25-plus Hy-Vee (formerly Drug Town) drugstores. It distributes products to its stores through several subsidiaries, including Lomar Distributing (specialty foods), Perishable Distributors of Iowa (fresh foods), and Florist Distributing (flowers). Charles Hyde and David Vredenburg founded the employee-owned firm in 1930. The company name is a combination of the founders' names. [Description from Hoover's]

This site reaches over 446K monthly people, of which 438K (98%) are in the U.S.The typical visitor banks at U.S. Bank, visits discovercard.com, and watches Food Network.


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US DMAs

The volume of traffic originating from individual US DMAs in a 30 day period. Indexes are calculated by comparing the percentage of a site's traffic from a given USA DMA to the pattern of all Internet traffic measured by Quantcast - e.g, an index of 500 indicates that the site gets five times as much of its traffic from the given USA DMA than the average Internet site.

DMA Uniques (Cookies) Uniques % Uniques Index Impressions % Impressions Index
Des Moines-Ames 69,706 13.94 3,154 15.48 4,539
Kansas City 64,753 12.95 686 13.22 1,612
Omaha 46,170 9.23 3,490 9.56 2,986
Cdr Rp-Wa-Ic&Db 43,977 8.79 3,635 9.07 3,196
Davnprt-Ri-Mlne 32,006 6.40 3,304 7.02 3,202
Sioux Fls(Mchl) 27,481 5.50 2,623 6.18 3,132
Lin&Hst-Krny 21,523 4.30 2,249 4.55 2,161
Columbia-Jf Cty 18,245 3.65 1,672 3.68 1,889
Mineapls-St. Pl 14,582 2.92 214 2.87 187
Rch-Masn Cy-Aus 13,854 2.77 3,101 2.95 3,076
Sioux City 13,754 2.75 3,424 2.94 2,819
Springfield MO 10,788 2.16 856 2.15 762
Chicago 10,296 2.06 55 1.86 56
Topeka 9,694 1.94 1,551 2.00 1,379
Madison 8,413 1.68 518 1.66 549
Mankato 6,546 1.31 2,977 1.40 2,612
Updated May 2013 • Next: Jun 2013

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People from Sites & Syndicators

These percentages usually sum greater than 100% due to overlap in site and syndicated audiences.

Reading Demographic Graphs

1. Index

This compares audience composition of the site to the entire Internet population. The higher the index number, the more concentrated a site is in a particular demographic.

As an example, if a site indexes 100 for age 18-24, that means a given visitor to it is as likely to be 18-24 as any internet user chosen at random. An index of 200 means the visitor is twice as likely to be 18-24, 50 means half as likely, and so on.

2. Segments are represented with icons. Segments include gender, age, household income, and education.

3. Very High Indexes (over 200) are denoted with a plus symbol.

4. Internet Average is represented by the dotted vertical line.


Reading Demographic Graphs

This compares audience composition of the site to the entire Internet population. The higher the index number, the more concentrated a site is in a particular demographic.

As an example, if a site indexes 100 for age 18-24, that means a given visitor to it is as likely to be 18-24 as any internet user chosen at random. An index of 200 means the visitor is twice as likely to be 18-24, 50 means half as likely, and so on.

1. Segment refers to the demographic composition attribute.

2. Very High Indexes (over 200) are denoted with a plus symbol.

3. Internet Average is represented by the dotted vertical line.

4. Expand the data to see the numbers which make up the index calculation.

The expanded view shows the percentage composition, the Internet average and the multiple.

1. A Colored Bar indicates that a segment exceeds the Internet average, whereas a gray bar indicates the segment is below the Internet average. Internet average is represented by the dotted vertical line.

2. A Multiple is the percentage of the segment on this site divided by the average of the same segment on the entire Internet.

Example:
80% female segment on site ÷ 32% female internet average = 2.5x

This chart breaks down the site's audience for a demographic. All the segments collectively equal 100%.

As an example, if a site indexes 100 for age 18-24, that means a given visitor to it is as likely to be 18-24 as any internet user chosen at random. An index of 200 means the visitor is twice as likely to be 18-24, 50 means half as likely, and so on.

1. The Top-Indexing Segment is shown in color.


Understanding User Retention

This graph examines user retention patterns for a mobile app, which tells the story of how much of app's user base continues to use the app after installation over time.

1. The x-axis is comprised of cohorts based on when users installed the app. For example, if we look at the column "+3 Days", this means that regardless of whether users installed the app a week ago or a month ago, what ratio of these users have returned within three days after installation.

2. The gray bars indicate the average retention rate across all days the app was downloaded.

3. The yellow line represents the average retention rate by period of all apps measured by Quantcast.

4. Install grouping details can be found by clicking on the down arrow.

In the expanded view, each row shows the retention patterns based on a point in time. Click on each row to compare that cohort against the average of all users installing the app.

1. The average day row shows the general retention rate for the entire app.

2. The highlighted row shows the retention rate compared against the average. In this example, 29% of users who installed the app one month ago returned at some point within two days, compared to the average of 35%.

3. The Add Date button allows you to add custom dates to determine retention patterns.

4. The Close button collapses the details and returns you to the default view.


Understanding Visit Frequency

This chart shows the number of return visits for unique users over the last 30 days.

1. Toggle between visit patterns of Logged In and Non Logged In users. In order to enable the toggle, the publisher must designate that the app has a logged in user base. The Logged In number represents the visit frequency of users that have logged in order to use this app.

3. For example, over the last 30 days, 3,644 unique users visited 4-7 times.


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