Title: The Value of Reputation on eBay: A Controlled Experiment
1The Value of Reputation on eBay A Controlled
Experiment
2Internet Market
- No outside instrument of reputation
- Temptation for sellers to misrepresent products
is great - Temptation to sloth
- Example Ship slowly after receiving payment
- Buyers are forced to assume risk
- Should lower the price buyers are willing to pay
3Internet Reputation Systems
- Necessary to substitute for traditional seller
reputation mechanisms - Inform buyers whether potential trading partners
are trustworthy - Deter opportunistic behavior
- Past actions affect future business
- Open record of transaction history
4Internet and Reputation
- Information can be tallied costlessly on a
continuous basis - Written assessments are easily assembled
- Information can be costlessly transmitted across
many customers
5Prior Studies
- Observational studies of a set of items whose
sellers had varying reputations - Studies correlate reputations with auction
outcomes - Most studies found that buyers paid more to
sellers with better reputations
6Observational Studies
- Can only examine reputation in markets for
standardized goods - Plagued by omitted variable bias
- Discussion What factors could lead to OMVB?
7Prior Work
- Shows that reputation affects
- Probability of a sale
- Price
- Probability that bidders enter an auction
- Number of bids in the auction
- Assessment of a sellers trustworthiness
8Confounds with Observational Studies
- Private email communications
- Can influence buyer willingness to bid high
- Unobservable to researcher
- Layout aesthetics
- More experience may mean higher quality
9Advantages to Field Experiments
- Automatically controls for confounds
- Ability to investigate reputation for
non-standard goods with unavailable book value
10eBay Reputation System
- To leave feedback a transaction must have
occurred - Buyer and seller can rate each other
- Opportunity for a one-line text comment
- Rated individuals can respond to comments that
they feel are unfair
11eBay Reputation System
- A buyer can click the net score in order to see a
detailed breakdown - Scroll to see individual comments
- Users may change identity by registering again
- No search mechanism to find negatives
12General Page
13Feedback Scores and Stars
- The Feedback score is the number in parentheses
next to a members user ID - Next to the Feedback score, you may also see a
star  - A Feedback score of at least 10 earns you a
yellow star - The higher the Feedback score, the more positive
ratings a member has received - As your Feedback score increases, your star will
change color accordingly, all the way to a silver
shooting star for a score above 1,000,000
14(No Transcript)
15Feedback Profile
A
C
B
D
16Key Areas
- Positive Feedback Ratings
- The percentage of positive ratings left by
members in the last 12 months. - This is calculated by dividing the number of
positive ratings by the total number of ratings
(positive neutral negative).
17Feedback Profile
A
C
B
D
18Key Areas
- Recent Feedback Ratings
- The total number of positive, neutral, and
negative Feedback ratings the member has received
in the last 1, 6, and 12 months
19Feedback Profile
A
C
B
D
20Key Areas
- Detailed Seller Ratings
- provide more details about this members
performance as a seller - Five stars is the highest rating, and one star is
the lowest - These ratings do not count toward the overall
Feedback score and they are anonymous - Sellers cannot trace detailed seller ratings
back to the buyer who left them
21Feedback Profile
A
C
B
D
22Key Areas
- All Feedback
- Provides feedback from all transactions
- Detailed user comments from transaction history
23eBay Reputation Trends
- Half of the buyers provide positive feedback
- This positive feedback is similar to saying
thank you in everyday discourse - Sellers receive negative feedback only 1 of the
time - Buyers receive negative feedback only 2 of the
time
24Halftime
- Thought Questions
- 1. What do you think are biggest factors that
account for so much positive feedback and so
little negative feedback? Is the reputation
system that good or is there something else at
play? - 2. Youve seen the eBay interface. Is there too
much information to digest? What do buyers and
sellers actually look at?
25Experimental Setup
- 8 eBay identities
- STRONG
- Net score of 2000 with one negative feedback
- NEW
- 7 new eBay identities with no feedback
- Matched 200 items sold by STRONG with one of the
new sellers
26Experimental Setup
- Vintage postcards sold
- Asymmetry between seller and buyer about
condition - No established book value to guide buyers
- 12 week experiment
- 5 new sellers presented 20 lots each for sale
- 2 sellers presented 50 lots each
27Experimental Setup
- To prevent customers from identifying the
experiment - Lots listed in a category that has thousands of
lots for sale - New sellers had slightly different format for
listings - Each half of each matched pair was listed at
different times
28Second Experiment
- Tested the effects of negative feedback
- 3 week experiment
- Purchased lots from three of the new sellers to
give negative feedback - Two categories of negative comments
- Item did not match description
- Item was in worse condition than listed
29Second Experiment
- Negative feedback was displayed at the top of the
comments page - 35 more matched pair lots
30Hypotheses
- Hypothesis 1
- Buyers will view an established seller as less
risky and pay more - Hypothesis 2
- New sellers with negative feedback will reap
lower profits than those without negative
feedback - Thoughts on these hypotheses or the experimental
setup?
31Imperfect Observation
- Neither STRONG nor NEW sell
- Gives little information
- Either STRONG or NEW sells
- Provides a lower or upper bound on the ratio of a
buyers willingness to pay - Both STRONG and NEW sell
- Ideal situation
32Slight Detour
- Censored Normal Regression Models
- Arise when the variable of interest is observable
in certain conditions - OLS is biased when the variable is unobservable
- Use these models when the independent variable is
known, but the dependent variable is not - Allows us to include data where either NEW or
STRONG sold
33Slight Detour
- Why dont we just use data where both sell?
- Reduce the sample size too much
- Truncation Bias
- New sellers sold fewer lots
- Observations of sold lots for NEW reflect more
extreme points than for STRONG
34Results
- Sign Test
- If STRONG sells but NEW does not, the sign is
positive - If both sell, the observed difference is used
- One sided sign test approaches significance
- Probability of sale was not independent of two
sellers - STRONG sold 63 of time
- NEW sellers sold 56 of the time
35Results
- Censored normal estimation
- Parametric Estimate
- Used lots where either or both sellers sold
- Estimated mean difference is significant
- P .044
- Suggests buyers are willing to pay 8.1 more for
lots sold by STRONG
36Results
- Second experiment shows negatives in a brief
reputation dont necessarily hurt revenues - NEW sellers without negatives sold 16 of 35 lots
- NEW sellers with negatives sold 14 of 35 lots
- No significant differences
- Sellers without negatives often received lower
prices when they did sell - Favored sellers without negatives 9 times
- Favored sellers with negatives 11 times
37Threats to Validity
- Experiment 1
- Differences in listing quality
- Repeat customers and private reputation
- Multiple purchases
- Experiment 2
- Small sample size
- Profile Design
- Timing of negative feedback
38Discussion
- Validity of results?
- Is the percentage of negative feedback more
valuable? - Dewally and Edgerington (2006)
- Do buyers click through profiles or merely rely
on overall score? - How do we test if the market is over or
underestimating reputation?
39Discussion
- Given the results, what moral hazards does this
pose for the structure of the eBay market?