Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
125 tokens/sec
GPT-4o
47 tokens/sec
Gemini 2.5 Pro Pro
43 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
47 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Shapes as Product Differentiation: Neural Network Embedding in the Analysis of Markets for Fonts (2107.02739v2)

Published 6 Jul 2021 in econ.EM and cs.CV

Abstract: Many differentiated products have key attributes that are unstructured and thus high-dimensional (e.g., design, text). Instead of treating unstructured attributes as unobservables in economic models, quantifying them can be important to answer interesting economic questions. To propose an analytical framework for these types of products, this paper considers one of the simplest design products-fonts-and investigates merger and product differentiation using an original dataset from the world's largest online marketplace for fonts. We quantify font shapes by constructing embeddings from a deep convolutional neural network. Each embedding maps a font's shape onto a low-dimensional vector. In the resulting product space, designers are assumed to engage in Hotelling-type spatial competition. From the image embeddings, we construct two alternative measures that capture the degree of design differentiation. We then study the causal effects of a merger on the merging firm's creative decisions using the constructed measures in a synthetic control method. We find that the merger causes the merging firm to increase the visual variety of font design. Notably, such effects are not captured when using traditional measures for product offerings (e.g., specifications and the number of products) constructed from structured data.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (60)
  1. Abadie, A. (2021): “Using synthetic controls: Feasibility, data requirements, and methodological aspects,” Journal of Economic Literature, 59, 391–425.
  2. Abadie, A., A. Diamond, and J. Hainmueller (2010): “Synthetic control methods for comparative case studies: Estimating the effect of California’s tobacco control program,” Journal of the American statistical Association, 105, 493–505.
  3. Abadie, A. and J. Gardeazabal (2003): “The economic costs of conflict: A case study of the Basque Country,” American economic review, 93, 113–132.
  4. Al-Halah, Z., R. Stiefelhagen, and K. Grauman (2017): “Fashion forward: Forecasting visual style in fashion,” in Proceedings of the IEEE International Conference on Computer Vision, 388–397.
  5. Angrist, J. D. and J.-S. Pischke (2010): “The credibility revolution in empirical economics: How better research design is taking the con out of econometrics,” Journal of economic perspectives, 24, 3–30.
  6. Arkhangelsky, D., S. Athey, D. A. Hirshberg, G. W. Imbens, and S. Wager (2019): “Synthetic difference in differences,” National Bureau of Economic Research.
  7. Ashenfelter, O. and D. Hosken (2008): “The effect of mergers on consumer prices: Evidence from five selected case studies,” National Bureau of Economic Research.
  8. Atalay, E., A. Sorensen, W. Zhu, and C. Sullivan (2020): “Post-Merger Product Repositioning: An Empirical Analysis,” FRB of Philadelphia Working Paper.
  9. Bajari, P. and C. L. Benkard (2005): “Demand estimation with heterogeneous consumers and unobserved product characteristics: A hedonic approach,” Journal of political economy, 113, 1239–1276.
  10. Bajari, P., Z. Cen, V. Chernozhukov, M. Manukonda, J. Wang, R. Huerta, J. Li, L. Leng, G. Monokroussos, S. Vijaykunar, et al. (2021): “Hedonic prices and quality adjusted price indices powered by AI,” cemmap working paper.
  11. Berry, S., J. Levinsohn, and A. Pakes (1995): “Automobile prices in market equilibrium,” Econometrica: Journal of the Econometric Society, 841–890.
  12. Berry, S. T. and J. Waldfogel (2001): “Do Mergers Increase Product Variety? Evidence from Radio Broadcasting,” The Quarterly Journal of Economics, 116, 1009–1025.
  13. Bottou, L. (2010): “Large-scale machine learning with stochastic gradient descent,” in Proceedings of COMPSTAT 2010, Springer, 177–186.
  14. Burnap, A., Y. Liu, Y. Pan, H. Lee, R. Gonzalez, and P. Y. Papalambros (2016): “Estimating and exploring the product form design space using deep generative models,” in International Design Engineering Technical Conferences and Computers and Information in Engineering Conference, American Society of Mechanical Engineers, vol. 50107, V02AT03A013.
  15. Campbell, N. D. and J. Kautz (2014): “Learning a manifold of fonts,” ACM Transactions on Graphics (TOG), 33, 91.
  16. Chernozhukov, V., D. Chetverikov, M. Demirer, E. Duflo, C. Hansen, W. Newey, and J. Robins (2018): “Double/debiased machine learning for treatment and structural parameters,” Economics Journal, 21, C1–C68.
  17. Chernozhukov, V., K. Wüthrich, and Y. Zhu (2021): “An exact and robust conformal inference method for counterfactual and synthetic controls,” Journal of the American Statistical Association, 116, 1849–1864.
  18. Dosovitskiy, A., J. T. Springenberg, M. Tatarchenko, and T. Brox (2016): “Learning to generate chairs, tables and cars with convolutional networks,” IEEE transactions on pattern analysis and machine intelligence, 39, 692–705.
  19. Economides, N. (1989): “Symmetric equilibrium existence and optimality in differentiated product markets,” Journal of Economic Theory, 47, 178–194.
  20. Fan, Y. (2013): “Ownership Consolidation and Product Characteristics: A Study of the US Daily Newspaper Market,” American Economic Review, 103, 1598–1628.
  21. Fan, Y. and C. Yang (2020): “Competition, product proliferation, and welfare: A study of the US smartphone market,” American Economic Journal: Microeconomics, 12, 99–134.
  22. Foster, D. J. and V. Syrgkanis (2019): “Orthogonal statistical learning,” arXiv preprint arXiv:1901.09036.
  23. Galenson, D. W. and B. A. Weinberg (2000): “Age and the quality of work: The case of modern American painters,” Journal of Political Economy, 108, 761–777.
  24. ——— (2001): “Creating modern art: The changing careers of painters in France from impressionism to cubism,” American Economic Review, 91, 1063–1071.
  25. Gentzkow, M., B. Kelly, and M. Taddy (2019a): “Text as Data,” Journal of Economic Literature, 57, 535–74.
  26. Gentzkow, M., J. M. Shapiro, and M. Taddy (2019b): “Measuring group differences in high-dimensional choices: method and application to congressional speech,” Econometrica, 87, 1307–1340.
  27. Glaeser, E. L., S. D. Kominers, M. Luca, and N. Naik (2018): “Big data and big cities: The promises and limitations of improved measures of urban life,” Economic Inquiry, 56, 114–137.
  28. Gross, D. P. (2016): “Creativity under fire: The effects of competition on creative production,” Review of Economics and Statistics, 1–17.
  29. Hastings, J. S. (2004): “Vertical relationships and competition in retail gasoline markets: Empirical evidence from contract changes in Southern California,” American Economic Review, 94, 317–328.
  30. He, K., X. Zhang, S. Ren, and J. Sun (2016): “Deep residual learning for image recognition,” in Proceedings of the IEEE conference on computer vision and pattern recognition, 770–778.
  31. Hoberg, G. and G. Phillips (2016): “Text Based Network Industries and Endogenous Product Differentiation,” Journal of Political Economy, 124, 1423–1465.
  32. Hotelling, H. (1929): “Stability in Competition,” Economic Journal, 39, 41–57.
  33. Kovashka, A., D. Parikh, and K. Grauman (2012): “Whittlesearch: Image search with relative attribute feedback,” in 2012 IEEE Conference on Computer Vision and Pattern Recognition, IEEE, 2973–2980.
  34. Kozlowski, A. C., M. Taddy, and J. A. Evans (2019): “The Geometry of Culture Analyzing the Meanings of Class through Word Embeddings,” American Sociological Review, 84, 905–949.
  35. Krizhevsky, A., I. Sutskever, and G. E. Hinton (2012): “Imagenet classification with deep convolutional neural networks,” in Advances in neural information processing systems, 1097–1105.
  36. Lancaster, K. J. (1966): “A new approach to consumer theory,” Journal of political economy, 74, 132–157.
  37. LeCun, Y., C. Cortes, and C. Burges (2010): “MNIST handwritten digit database,” AT&T Labs.
  38. Magnolfi, L., J. McClure, and A. Sorensen (2022): “Triplet Embeddings for Demand Estimation,” SSRN working paper.
  39. Mall, U., K. Matzen, B. Hariharan, N. Snavely, and K. Bala (2019): “Geostyle: Discovering fashion trends and events,” in Proceedings of the IEEE International Conference on Computer Vision, 411–420.
  40. Mankiw, N. G. and M. D. Whinston (1986): “Free entry and social inefficiency,” The RAND Journal of Economics, 48–58.
  41. Mazzeo, M. J., K. Seim, and M. Varela (2018): “The Welfare Consequences of Mergers with Endogenous Product Choice,” The Journal of Industrial Economics, 66, 980–1016.
  42. Mikolov, T., K. Chen, G. Corrado, and J. Dean (2013): “Efficient estimation of word representations in vector space,” arXiv preprint arXiv:1301.3781.
  43. Nevo, A. (2001): “Measuring market power in the ready-to-eat cereal industry,” Econometrica, 69, 307–342.
  44. Nevo, A. and M. D. Whinston (2010): “Taking the dogma out of econometrics: Structural modeling and credible inference,” Journal of Economic Perspectives, 24, 69–82.
  45. O’Donovan, P., J. Lībeks, A. Agarwala, and A. Hertzmann (2014): “Exploratory font selection using crowdsourced attributes,” ACM Transactions on Graphics (TOG), 33, 1–9.
  46. Parikh, D. and K. Grauman (2011): “Relative attributes,” in 2011 International Conference on Computer Vision, IEEE, 503–510.
  47. Rosen, S. (1974): “Hedonic prices and implicit markets: product differentiation in pure competition,” Journal of political economy, 82, 34–55.
  48. Schroff, F., D. Kalenichenko, and J. Philbin (2015): “FaceNet: A unified embedding for face recognition and clustering,” in 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 815–823.
  49. Seim, K. (2006): “An Empirical Model of Firm Entry with Endogenous Product-Type Choices,” The RAND Journal of Economics, 37, 619–640.
  50. Simonyan, K. and A. Zisserman (2014): “Very deep convolutional networks for large-scale image recognition,” arXiv preprint arXiv:1409.1556.
  51. Sun, Y., X. Wang, and X. Tang (2015): “Deeply learned face representations are sparse, selective, and robust,” in Proceedings of the IEEE conference on computer vision and pattern recognition, 2892–2900.
  52. Sweeting, A. (2010): “The effects of mergers on product positioning: evidence from the music radio industry,” The RAND Journal of Economics, 41, 372–397.
  53. ——— (2013): “Dynamic Product Positioning in Differentiated Product Markets: The Effect of Fees for Musical Performance Rights on the Commercial Radio Industry,” Econometrica, 81, 1763–1803.
  54. Taigman, Y., M. Yang, M. Ranzato, and L. Wolf (2014): “Deepface: Closing the gap to human-level performance in face verification,” in Proceedings of the IEEE conference on computer vision and pattern recognition, 1701–1708.
  55. Tenenbaum, J. B. and W. T. Freeman (2000): “Separating style and content with bilinear models,” Neural computation, 12, 1247–1283.
  56. Wang, J., T. Song, Yangand Leung, C. Rosenberg, J. Wang, Jingbinand Philbin, B. Chen, and Y. Wu (2014): “Learning Fine-grained Image Similarity with Deep Ranking,” arXiv preprint arXiv:1404.4661.
  57. Wilson, D. R. and T. R. Martinez (2003): “The general inefficiency of batch training for gradient descent learning,” Neural networks, 16, 1429–1451.
  58. Wollmann, T. G. (2018): “Trucks without bailouts: Equilibrium product characteristics for commercial vehicles,” American Economic Review, 108, 1364–1406.
  59. Yu, A. and K. Grauman (2019): “Thinking outside the pool: Active training image creation for relative attributes,” in Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, 708–718.
  60. Zhang, S., D. D. Lee, P. V. Singh, and K. Srinivasan (2017): “How much is an image worth? Airbnb property demand estimation leveraging large scale image analytics,” SSRN.
Citations (4)

Summary

We haven't generated a summary for this paper yet.

X Twitter Logo Streamline Icon: https://streamlinehq.com