Link to the University of Pittsburgh
Link to the University Library SystemContact us link
AEI Banner

Surplus Identification with Non-Linear Returns. ESRI WP522. December 2015

Lunn, Peter D. and Somerville, Jason J. (2015) Surplus Identification with Non-Linear Returns. ESRI WP522. December 2015. [Working Paper]

[img] PDF - Published Version
Download (2616Kb)

    Abstract

    We present evidence from two experiments designed to quantify the impact of cognitive constraints on consumers' ability to identify surpluses. Participants made repeated forced-choice decisions about whether products conferred surpluses, comparing one or two plainly perceptible attributes against displayed prices. Returns to attributes varied in linearity, scale and relative weight. Despite the apparent simplicity of this task, in which participants were incentivised and able to attend fully to all relevant information, surplus identification was surprisingly imprecise and subject to systematic bias. Performance was unaffected by monotonic non-linearities in returns, but non-monotonic non-linearities reduced the likelihood of detecting a surplus. Regardless of the shape of returns, learning was minimal and largely confined to initial exposures. Although product value was objectively determined, participants exhibited biases previously observed in subjective discrete choice, suggesting common cognitive mechanisms. These findings have implications for consumer choice models and for ongoing attempts to account for cognitive constraints in applied microeconomic contexts.

    Export/Citation:EndNote | BibTeX | Dublin Core | ASCII (Chicago style) | HTML Citation | OpenURL
    Social Networking:
    Item Type: Working Paper
    Subjects for non-EU documents: Countries > Ireland
    EU policies and themes > Policies & related activities > economic and financial affairs > general
    Subjects for EU documents: UNSPECIFIED
    EU Series and Periodicals: UNSPECIFIED
    EU Annual Reports: UNSPECIFIED
    Series: Series > Economic and Social Research Institute (ESRI), Dublin > ESRI Working Papers
    Depositing User: Alyssa McDonald
    Official EU Document: No
    Language: English
    Date Deposited: 18 Jul 2017 14:51
    Number of Pages: 43
    Last Modified: 18 Jul 2017 14:51
    URI: http://aei.pitt.edu/id/eprint/88313

    Actions (login required)

    View Item

    Document Downloads