Factors Driving Consumer Involvement in Energy Consumption and Energy-Efficient Purchasing Behavior: Evidence from Korean Residential Buildings
Abstract
:1. Introduction
2. Theoretical Background
2.1. The Involvement Literature
2.2. Energy Behavioral Studies
3. Research Method
3.1. Conceptual Framework
3.2. Variables and Measurement
3.2.1. Consumer Values and Preferences Variables
3.2.2. Socioeconomic and Housing Characteristics Variables
3.2.3. HEI Variables
3.2.4. Energy Consumption Variables
3.2.5. Appliance Purchase Variables
3.3. HEI Measurements
3.4. Survey Design
4. Data
4.1. Sample Distributions
4.2. Estimation
5. Results and Discussions
5.1. Main Sources of HEI
5.2. HEI and Outcomes
5.3. Additional Analysis: Consumer Segmentation by HEI
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Classification | Variable | Definition (Units) |
---|---|---|
Consumer Values & Preferences (including attitudinal factors) | Tolerance | Ordinal stated willingness to forego personal thermal comfort to save energy bills |
Automation | Ordinal stated willingness to invest in indoor heating/cooling automation systems compared to technologies requiring manual operation | |
Receptivity | Ordinal stated tendency of adopting new technologies or unfamiliar practices | |
Environmental Concern | Ordinal stated degree to which the respondent is conscious of natural environment and eco-friendly in goods purchases | |
Energy Knowledge | Ordinal stated knowledge or awareness of the electricity rate structures and the environmental impact of energy consumption | |
Importance | Ordinal stated importance of electricity or gas services for sustaining everyday life | |
Socioeconomic Characteristics | Income | Interval variable for the household’s average monthly gross income, inclusive of other non-salary incomes; choice among ten equally spaced income ranges in increasing order (1: below 1 million KRW, 2: above 1 million KRW and below 2 million KRW, 10: above 9 million KRW) |
Gender | Categorical variable indicating the respondent’s gender (1: male, 2: female) | |
Age | Interval variable indicating the respondent’s age group; choice among seven equally spaced age groups in increasing order (1: below twentieth, 2: in twentieth, 7: above seventieth) | |
Job | Categorical variable indicating current occupation; choice among nine items (1: housewife, 2: office worker, 9: unemployed) | |
Education | Categorical and ordinal variable indicating the respondent’s educational experience; choice among five items in increasing order (1: primary education, 2: secondary education, 5: master’s degree or above) | |
Household Size | Continuous variable indicating the size of the household, ranging from one to seven in our sample | |
Housing Characteristics | Ownership | Categorical variable indicating the type of house ownership (1: owned, 2: rented, 3: public housing) |
Heat | Categorical variable indicating the type of heating system (1: individual heating, 2: central heating, 3: district heating) | |
Dwelling Size | Interval variable for the house’s floor area for exclusive use; choice among seven equally spaced ranges in increasing order (1: below 10 pyeong (3.3 m2), 2: above 10 pyeong and below 20 pyeong, 7: above 60 pyeong) | |
House Type | Categorical variable indicating house type (1: single detached house, 2: townhouse, 3: apartment house, 4: others) | |
Year Built | Interval variable indicating the year the housing was built; choice among eight equally spaced ranges in increasing order (1: before 1970, 2: from 1970 to 1979, 8: after 2010) | |
Household Energy Involvement (HEI) | HEI_Use | Ordinal variable indicating usage-related HEI as measured by the level of household interest or attention to efficient energy uses; choice among seven-point Likert scale items in increasing order |
HEI_Pur | Ordinal variable indicating purchase-related involvement as measured by the level of household involvement in investing in particular energy-efficient appliances or home energy retrofits | |
Outcomes | Energy consumption (log ECOSTS) | Sum of median values taken from the primary ordinal variables of monthly energy bills by season and by energy types; primary monthly energy bill ranges determined by billing groups of different marginal prices |
LED Purchase | Dummy variable indicating the household’s respective purchase of energy-using durables, such as LEDs (Light-Emitting Diodes), programmable thermostats, high-performance windows, and high-efficiency boilers |
Anchor Points of the Measurement Scale | ||
---|---|---|
1. Interests and consciousness in energy use at home 2. Efforts in attention and information searching, either routinized or triggered 3. Willingness to invest in energy-efficient appliances and home energy improvement 4. Active consideration of energy efficiency when purchasing home energy equipment | ||
Scaling: 7-point Likert scale | ||
1 Strongly unlikely, 2 Very unlikely, 3 Unlikely, 4 Neutral, 5 Likely, 6 Very likely, 7 Strongly likely | ||
Types (No. of Items) | List of Measurement Items | Coefficient Alpha (std) |
Usage-Related HEI (11) | I ask around or find information on my own to minimize energy bills while still remaining comfortable indoors. | 0.872 |
I teach my family members to pay attention to not wasting energy at home. | ||
I make efficient use of indoor lighting (e.g., turning off the lighting in vacant rooms). | ||
When using electronic devices, I tend to search for ways to save energy (e.g., set my computers in the power-saving mode). | ||
I carefully examine my monthly home energy bills. | ||
Using energy efficiently and without unnecessary waste in my home is one of my main concerns. | ||
I normally turn off a power strip when not using the items plugged into it. | ||
Especially in the summer and winter, I pay attention to operating the air-conditioner or the heating system according to when many family members are at home. | ||
I tend to be concerned about the sudden increases in electricity costs due to the increasing block tariff rates when using a lot of electricity. | ||
In the winter, I try to reduce heat loss from the windows by improving the insulation, such as using thick curtains or attaching weather strips. | ||
When appliances or devices are not in use, I try to avoid the unnecessary use of energy (e.g., unplugging my TV or computer from the outlet). | ||
Purchase-Related HEI (5) | I have seriously considered replacing energy-intensive lighting fixtures with more efficient ones (e.g., LED bulbs). | 0.795 |
I take energy ratings information into serious account when purchasing home appliances. | ||
I tend to hesitate to buy electric appliances for fear of excessive electricity bills. | ||
I take factors that affect heating and cooling costs (e.g., a southern exposure, double windows, type of heating system, age of building) into serious consideration when purchasing or renting a house. | ||
I have considered purchasing high-efficiency energy equipment (e.g., certified products, solar water heaters, high-efficiency boilers, insulating windows) to reduce energy costs. |
Ordered Probit Estimation | HModel 1 | HModel 2 | HModel 3 | HModel 4 |
---|---|---|---|---|
VARIABLES | HEI_Use | HEI_Use | HEI_Pur | HEI_Pur |
Values and Preferences: | ||||
Automation | 0.0131 | 0.133 *** | ||
(0.0153) | (0.0155) | |||
Receptivity | 0.0505 *** | 0.0941 *** | ||
(0.0179) | (0.0180) | |||
Tolerance | 0.487 *** | 0.416 *** | ||
(0.0218) | (0.0217) | |||
EnvironmentalConcern | 0.303 *** | 0.350 *** | ||
(0.0234) | (0.0237) | |||
EnergyKnowledge | 0.382 *** | 0.330 *** | ||
(0.0240) | (0.0240) | |||
Importance | 0.260 *** | 0.105 *** | ||
(0.0224) | (0.0223) | |||
Socioeconomic and Housing Characteristics: | ||||
Income | −0.00397 | −0.0416 *** | 0.00102 | −0.0432 *** |
(0.0101) | (0.0103) | (0.0101) | (0.0103) | |
Gender (female) | 0.278 *** | 0.413 *** | 0.0696 * | 0.168 *** |
(0.0366) | (0.0377) | (0.0365) | (0.0376) | |
Age | 0.0709 *** | −0.0429 ** | 0.0820 *** | −0.0175 |
(0.0195) | (0.0198) | (0.0195) | (0.0199) | |
Ownership (rented) | 0.00713 | −0.0163 | −0.0804 * | −0.112 *** |
(0.0421) | (0.0422) | (0.0422) | (0.0424) | |
Ownership (public rented) | −0.0314 | −0.0812 | 0.0562 | 0.00758 |
(0.122) | (0.122) | (0.122) | (0.122) | |
Heating (central) | −0.250 *** | −0.207 *** | −0.144 ** | −0.0845 |
(0.0705) | (0.0707) | (0.0706) | (0.0709) | |
Heating (district) | −0.0536 | −0.0365 | 0.000747 | 0.0580 |
(0.0521) | (0.0522) | (0.0521) | (0.0524) | |
Dwelling size | −0.00427 | −0.0344 | 0.0709 *** | 0.0508 ** |
(0.0210) | (0.0211) | (0.0210) | (0.0212) | |
House type (townhouse) | −0.00888 | −0.00721 | 0.00662 | 0.0209 |
(0.0653) | (0.0655) | (0.0655) | (0.0658) | |
House type (apartment) | 0.0503 | −0.00246 | −0.000600 | −0.0492 |
(0.0573) | (0.0575) | (0.0575) | (0.0578) | |
House type (others) | −0.157 | −0.229 * | −0.00805 | −0.0431 |
(0.117) | (0.118) | (0.118) | (0.118) | |
Year built | −0.00833 | −0.00976 | −0.0317 *** | −0.0387 *** |
(0.0110) | (0.0110) | (0.0110) | (0.0110) | |
Observations | 3,245 | 3,245 | 3,245 | 3,245 |
Pseudo R2 | 0.003 | 0.089 | 0.003 | 0.103 |
Log pseudolikelihood | −11334.44 | −10361.26 | −9171.78 | −8253.59 |
EModel 1 | EModel 2 | PModel 1 | PModel 2 | |
---|---|---|---|---|
Variables | Energy Consumption | Energy Consumption | LED Purchase | LED Purchase |
HEI_Use | −0.0705 *** | 0.0921 ** | ||
(0.0109) | (0.0406) | |||
HEI_Pur | −0.0578 *** | 0.206 *** | ||
(0.01000) | (0.0396) | |||
Socioeconomic and Housing Characteristics: | ||||
Income | 0.0215 *** | 0.0218 *** | 0.0880 *** | 0.0851 *** |
(0.00497) | (0.00495) | (0.0227) | (0.0229) | |
Gender (female) | −0.0159 | −0.0266 | −0.556 *** | −0.594 *** |
(0.0173) | (0.0172) | (0.0843) | (0.0827) | |
Age | 0.0269 *** | 0.0274 *** | −0.197 *** | −0.254 *** |
(0.00949) | (0.00951) | (0.0411) | (0.0407) | |
Ownership (renter) | −0.0145 | −0.0183 | −0.773 *** | −0.809 *** |
(0.0197) | (0.0197) | (0.1000) | (0.0997) | |
Ownership (public) | −0.0956 | −0.0911 | −0.887 ** | −0.930 *** |
(0.0603) | (0.0601) | (0.356) | (0.357) | |
Heating (central) | −0.174 *** | −0.167 *** | −0.120 *** | −0.133 *** |
(0.0380) | (0.0379) | (0.0244) | (0.0242) | |
Heating (district) | −0.230 *** | −0.227 *** | 0.0195 | 0.0186 |
(0.0256) | (0.0255) | (0.160) | (0.160) | |
Dwelling size | 0.0833 *** | 0.0865 *** | 0.0392 | 0.0439 |
(0.0113) | (0.0113) | (0.121) | (0.121) | |
House type (townhouse) | 0.0420 | 0.0432 | 0.231 *** | 0.210 *** |
(0.0302) | (0.0303) | (0.0489) | (0.0492) | |
House type (apartment) | −0.0838 *** | −0.0860 *** | −0.420 *** | −0.481 *** |
(0.0277) | (0.0278) | (0.146) | (0.146) | |
House type (studios) | −0.0186 | −0.0101 | −0.410 *** | −0.446 *** |
(0.0573) | (0.0571) | (0.125) | (0.124) | |
Year built | −0.00444 | −0.00547 | −0.165 | −0.238 |
(0.00539) | (0.00540) | (0.283) | (0.284) | |
Family size | 0.120 *** | 0.121 *** | −0.0479 | −0.0782 ** |
(0.00895) | (0.00894) | (0.0388) | (0.0388) | |
Constant | 10.98 *** | 10.89 *** | ||
(0.0882) | (0.0829) | |||
Observations | 3,237 | 3,237 | 2,968 | 2,968 |
R-squared/Loglikelihood | 0.187 | 0.186 | −1772.65 | −1761.51 |
High INV(1) | Medium INV(2) | Low INV(3) | (2) vs (1) | (3) vs (1) | (3) vs (2) | |
---|---|---|---|---|---|---|
Automation | 4.573 | 4.246 | 3.966 | −0.326 *** | −0.607 *** | −0.280 *** |
(1.566) | (1.130) | (1.012) | (0.051) | (0.060) | (0.055) | |
Receptivity | 4.844 | 4.423 | 4.115 | −0.420 *** | −0.729 *** | −0.308 *** |
(1.265) | (1.044) | (0.981) | (0.045) | (0.053) | (0.049) | |
Tolerance | 5.782 | 5.040 | 4.492 | −0.742 *** | −1.289 *** | −0.547 *** |
(0.874) | (0.779) | (0.822) | (0.033) | (0.039) | (0.036) | |
Environmental Concern | 5.274 | 4.559 | 4.045 | −0.715 *** | −1.228 *** | −0.513 *** |
(0.886) | (0.768) | (0.829) | (0.033) | (0.039) | (0.036) | |
Energy Knowledge | 5.016 | 4.435 | 3.878 | −0.580 *** | −1.137 *** | −0.556 *** |
(0.873) | (0.779) | (0.757) | (0.032) | (0.038) | (0.035) | |
Importance | 5.673 | 5.442 | 5.217 | −0.230 *** | −0.455 *** | −0.224 *** |
(0.803) | (0.772) | (0.829) | (0.032) | (0.038) | (0.035) | |
Income | 5.169 | 5.133 | 5.010 | −0.036 | −0.159 | −0.122 |
(2.058) | (1.966) | (1.974) | (0.081) | (0.095) | (0.088) | |
Gender | 1.538 | 1.493 | 1.473 | −0.045 * | −0.065 ** | −0.019 |
(0.498) | (0.500) | (0.500) | (0.020) | (0.024) | (0.022) | |
Age | 4.223 | 4.073 | 3.970 | −0.151 *** | -0.254 *** | −0.103 * |
(0.995) | (0.959) | (0.970) | (0.039) | (0.046) | (0.043) | |
Education | 3.530 | 3.592 | 3.525 | 0.062 | −0.005 | −0.067 |
(0.980) | (0.940) | (0.959) | (0.039) | (0.046) | (0.042) | |
Ownership | 1.318 | 1.355 | 1.377 | 0.037 | 0.059 * | 0.022 |
(0.515) | −0.519 | (0.536) | (0.021) | (0.025) | (0.023) | |
Dwelling Size | 3.528 | 3.412 | 3.375 | −0.116 ** | −0.153 ** | −0.037 |
(1.043) | (1.030) | (1.071) | (0.042) | (0.050) | (0.046) | |
Year Built | 5.325 | 5.500 | 5.542 | 0.175 * | 0.218 * | 0.042 |
(1.783) | (1.700) | (1.717) | (0.070) | (0.083) | (0.077) | |
Family Size | 3.482 | 3.490 | 3.405 | 0.008 | -0.077 | −0.085 |
(1.054) | (1.051) | (1.091) | (0.043) | (0.051) | (0.047) |
High INV(1) | Medium INV(2) | Low INV(3) | (1)–(2) | (1)–(3) | (2)–(3) | |
---|---|---|---|---|---|---|
Monthly Avg. | 95,291 | 99,509 | 104,135 | 4218 * | 8844 *** | 4626 * |
(46,708) | (46,475) | (47,952) | (1923) | (2254) | (2089) | |
Winter | 129,881 | 135,486 | 138,715 | 5605 * | 8833 ** | 3229 |
(63,366) | (63,067) | (64,744) | (2606) | (3055) | (2831) | |
Summer | 77,397 | 81,104 | 86,724 | 3707 | 9326 *** | 5619 ** |
(46,011) | (45,672) | (47,088) | (1891) | (2217) | (2054) |
High INV(1) | Medium INV(2) | Low INV(3) | |
---|---|---|---|
LED | 39.5 | 28.9 | 20.7 |
Programmable Thermostat | 20.2 | 14.4 | 9.0 |
High-efficiency Boiler | 23.1 | 17.5 | 13.5 |
High-performance Window | 17.0 | 9.6 | 5.2 |
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Yoo, S.; Eom, J.; Han, I. Factors Driving Consumer Involvement in Energy Consumption and Energy-Efficient Purchasing Behavior: Evidence from Korean Residential Buildings. Sustainability 2020, 12, 5573. https://doi.org/10.3390/su12145573
Yoo S, Eom J, Han I. Factors Driving Consumer Involvement in Energy Consumption and Energy-Efficient Purchasing Behavior: Evidence from Korean Residential Buildings. Sustainability. 2020; 12(14):5573. https://doi.org/10.3390/su12145573
Chicago/Turabian StyleYoo, Soyoung, Jiyong Eom, and Ingoo Han. 2020. "Factors Driving Consumer Involvement in Energy Consumption and Energy-Efficient Purchasing Behavior: Evidence from Korean Residential Buildings" Sustainability 12, no. 14: 5573. https://doi.org/10.3390/su12145573
APA StyleYoo, S., Eom, J., & Han, I. (2020). Factors Driving Consumer Involvement in Energy Consumption and Energy-Efficient Purchasing Behavior: Evidence from Korean Residential Buildings. Sustainability, 12(14), 5573. https://doi.org/10.3390/su12145573