I saw a tweet from @bgtheory with a link to his article about an email he got saying that one of his clients will be forced to use the new AdWords interface in 30 days. According to seroundtable 56% of advertisers prefer the old interface and I’d count myself as one of them. People seem to hate it whenever a familiar web interface changes (I’m talking about you, Facebook) so, rather than dislike it because it is new and unfamiliar I thought I’d try and think of some more rational reasons to hate it. 
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Everyone agrees that getting the account structure right can improve PPC performance and make management a lot easier. When setting up a new account the structure is one of the first things I think about but what is the best way to change the structure of an existing account?

Image by Elsie Esq.
I’ve read a lot about how account structure is important when setting up an account but I haven’t seen anything about the best way to modify and adapt the account structure of an exisiting account. 
Last week I asked on Twitter if anyone had any good ideas for a PPC related blog post. @bhartzer replied suggesting I do one about PPC mistakes using his post as inspiration. In the post he shows how many businesses that shouldn’t be were bidding on the keyword “keyword”
I did my own search on the word “keyword” to see if this also occurred in the UK. It does, as you can see from the adverts that were returned. So far, so much a duplication of Bill Hartzer’s post. Then I clicked the Renault advert and was taken straight to the homepage without even being sent to a specific landing page; given the ad text I’d expected to find more information about the £2000 scrap scheme and how to use it to buy a Renault. 
Paid search rocks. Despite the endless debate about which is best, organic search engine optimisation (SEO) or paid search, both are hugely important aspects of online promotion.

Image credit: Flickr
Despite this, a survey conducted by Microsoft at the end of last year showed 59 per cent of small businesses which have a website do not have a current paid search campaign. That is incredible. For controlled bursts of marketing and the building of brand awareness, paid search can be a powerful tool. 
My post about Google Analytics filters went down pretty well so I thought I’d keep the analytics bandwagon rolling and talk about how to use the new Advanced Segmentation feature to get useful data for setting advanced ad scheduling options.
For those of you who don’t know, AdWords has a feature where bids can be increased or decreased by a set multiplier based on the time and day of the week. This is really useful since for most accounts traffic at certain times and on certain days is more likely to convert so it is more valuable. 
As shown in my last blog post, now that Google are using expanded broad match to trigger ads from “travel ppc” for a search query on “shooting holidays USA”, getting a comprehensive list of negative keywords is a good idea. In this post I list five good resources for finding negative keywords; some of them are not intended to be used in this way but they still give useful information about possible negative keywords. 
It can be very difficult at times to find the actual search terms your PPC traffic arrives from, so this is a Google Analytics trick all advertisers should know. Google’s search query report can be useful but for high-traffic phrase or broad match keywords being told that 8 of your clicks arrived on “85 unique queries” doesn’t really give you the complete picture!
Since the introduction of expanded broad match Google can (and does) match your broad match keywords to just about anything vaguely relevant; knowing these queries is important, either to negative match them or to reduce CPCs by using an exact match. The image below really does highlight this point, notice the extremely irrelevant term “shooting holidays USA” was triggered by a broad match of travel PPC!
This report was setup last week and shows the AdWords keywords (either exact, phrase or broad match) followed by the actual search term which triggered the clickthrough in brackets:

(Click for full-size image)
Step by step guide on how to setup a Search Query report in Google Analytics
This information can easily be found in Google Analytics but, although the method is simple, it is not obvious; to be able to access this PPC goldmine you have to use filters. Until last week I didn’t even know the filters feature existed and even if I had I wouldn’t have been able to do the regular expressions stuff that our filters will need. For this reason I’d like to thank the Google Analytics Experts and the linklove blog for giving me some simple step by step instructions.
- In the above case we’ve set up a new profile before messing around, just to ensure that if a mistake was made none of the data is affected. There’s an “Add a Website Profile” option on the Analytics settings page; you want to add a profile for an existing site and then name it.
- Then you want to write the two filters; click the “Filter Manager” button and then add a filter.
- This first filter will get the search query and place it in a user defined field. I call it “Get Search Query” but you can name it whatever you want to. Select “Custom Filter” from the filter type drop down menu and select the “Advanced” radio button. You should see some input fields named “Field A -> Extract A” and similar.
- In the “Field A -> Extract A” drop down menu select “Referral”; this will pull out the SERP’s URL on which the ad was shown. In the box to the left on the drop down menu write “(\?|&)(q|p)=([^&]*)” without the quotation marks. This is a regular expression which extracts the search query from the SERP’s URL.
- In the “Field B -> Extract B” drop down menu select “Campaign Medium” and write “ppc|cpc” in the box. This filters out all the organic clicks.
- In the “Output To -> Constructor” drop down choose “Customized Field 1” and enter “$A3” in the box. This just tells Google Analytics where to store the data. Finally you need to click the button to make field B required and the one to turn off case sensitivity. Then apply the filter to your new profile.
- The 2nd filter includes this new data in the keyword report. Again, you want to set up an advanced custom filter but this time choose “Customized Field 1” from the “Field A -> Extract A” drop down. In the box write “(.*)”
- For “Field B -> Extract B” select “Campaign Term” to find out which of your keywords the search query matched and enter “(.*)” again in the box.
- Finally in the “Output To -> Constructor” menu choose “Campaign Term” or wherever you want your data to go and then enter “$B1, $A1” The space after the comma means that you can export your data to a .csv and have a separate field for the actual search term.
- If you’ve followed the steps as I’ve laid them out then the filters should be applied in the right order; if you want to check the information is there when you click to edit the new profile from the “Analytics Settings” page.
As always, it’ll be a little while before Google Analytics starts to register the new data so don’t be too impatient. Unfortunately the filters can’t be applied retrospectively so you can’t start using them on all your old data but as far as I’m concerned this is the only downside. Set up the filters and start refining your AdWords campaigns!
It is a PPC truism the ads in the top two positions get too many “curiosity clicks” and tend to convert poorly in comparison to ads lower down the page. I guess the thinking is that people who bother to read past the first couple of lines on the SERP are serious buyers. (So much of a truism that I can’t seem to find one blog post to link to that deals with this. Maybe it is a Richard Fergie truism rather than an industry wide one).
This all seemed to make sense so I introduced position preference bidding for one of our clients last week. There was no lower limit on ad position but the ads should not have appeared higher than position 3. In the clients own words the results were “a little grim to say the least.” Conversion rates dropped over 10%. O dear.
I should’ve used my head and done some number crunching beforehand. Instead I’ll do it now and share the results with you. I know how much you love graphs, so I’ll even throw in one of them. Just for you.
The data comes from clients that use conversion tracking and for whom I also had last months data already cached in AdWords editor. For each ad group (over 2000 in total) I’ve plotted its average ad position against its conversion rate. Conversion rates can be very different across different verticals so this figure has been expressed as a percentage of the account average. A logarithmic scale has been used for the conversion rate percentage to try and space the data points out a bit.
Kevin’s comment when he saw this was “that looks like a bit of a mess” and I think he’s right. The graph is dominated by travel pay per click campaigns and recruitment accounts which make a big cloud in the middle. There seems to be a dramatic tail off in conversion rates for the DNA testing vertical about position 5.2 but this data is from only one small account so it may not be that accurate.
So what does this mean in terms of position preference bidding? It all depends on how much you have to pay for the top spot. As this next graph shows, there is a definite increase in traffic associated with the top ad positions (the trend is exaggerated when a logarithmic scale is not used) so the higher placed your ad the more conversions you’ll get. The trend is not as pronounced as I thought it would be, but there is a correlation there.
If the cost/conversion is low enough you stand to make a lot of money, but if the CPC pushes your cost/conversion too high then it might not be worth bidding for the top spot.
To calculate if bidding for the top spot is worthwhile you need to decide if the tighter margins you’ll get as a result of increased ad spend is worth the extra sales. In some cases it will be, in some cases it won’t. I think my first graph shows that, at least in the verticals tested, there is no sweet spot for ads where conversion rates are high and prices are cheap. It comes down to a quite simple equation; make more on a tighter margin with a higher CPC or make less but have more profit on each transaction.
My own placement preference bidding experiment was a failure; let me know if you’ve had any successful ones.
Do you do any sort of pay-per-click management for the online travel vertical? I recently attended a Google AdWords Webinar about online travel trends which they based on a ComScore study of 50,000 UK web users. Our Google rep sent me a copy of the ComScore study which I have used to bring you my top ten useful tips for running a travel PPC campaign.
- Nearly half of all travel searches are brand related; can you afford to miss out on all this traffic? 36% of people who buy holidays use a brand search first and use a brand search immediately before purchasing so bid on branded keywords in your PPC campaigns
- Use day parting for PPC; people are 30% more likely to purchase a holiday on a Monday or Tuesday. Increase your bids then to capture this traffic and lower them at the weekend. Only 7% of purchasers buy a holiday on a Saturday.
- Get them early; 15.9% of purchasers buy their holiday from the first site they visit. Only 1.6% will buy immediately, but around 14.3% will return at some point for a conversion. Forget what you’ve learnt about the buying cycle; bidding on keywords that customers use in the research phase can get you a 15.9% conversion rate!
- Make sure your URL’s are memorable; 35% of transactions occur without a search on the same day. These people must’ve seen something they liked then gone away to think about it. Make sure they can remember where they were.
- Destinations aren’t as important as you think. 45% of online travel purchases are made without a destination search. Of course this means that 55% do use a destination related search term but I used to think that just about everybody would search for their destination at some point.
- Save some money for January. For the last few years there has been a massive peak in travel searches every January. Look on Google Trends with the travel query of your choice. Or don’t; trust me, there will be a peak in January.
- Ad variations are always a bit of a mystery. Test everything. Once I misspelled “hotels” as “hotsel” is an ad which turned out to have a (statistically) significantly better CTR. I thought I’d found something great so I rolled similar variations out across other ad groups. A few weeks later I checked to see what was going on, using splittester to judge which results were significant. Some ad groups it was better, some ad groups it was worse. I have no idea why. Test everything all the time.
- Most purchasers will visit your site at least twice before purchasing; make repeat visits more likely by including new and interesting content for them.
- Be patient. You’ve made all these changes, but on average it takes 29 days between first search and transaction for a holiday buyer. 30% of purchases occur more than 6 weeks after the initial search.
- Don’t want to be patient? Want to get the 17% of users who purchase after only one search? Then ideally you’re from easyjet, ryanair or some other well known airline. Branded searches tend to convert quicker (63% of single search transactions are branded) so build your brand if you want the shortest gap between click and conversion
I only got to look at the study this week so there hasn’t been time to see if all of these tips really work. I’ll let you know if any big surprises come along as I collect more data.
Update: We have now published a travel SEO article which looks at how to target searchers at the right stage of the buying cycle.










