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Language and Ideology in Congress

Published online by Cambridge University Press:  23 May 2011

Abstract

Legislative speech records from the 101st to 108th Congresses of the US Senate are analysed to study political ideologies. A widely-used text classification algorithm – Support Vector Machines (SVM) – allows the extraction of terms that are most indicative of conservative and liberal positions in legislative speeches and the prediction of senators’ ideological positions, with a 92 per cent level of accuracy. Feature analysis identifies the terms associated with conservative and liberal ideologies. The results demonstrate that cultural references appear more important than economic references in distinguishing conservative from liberal congressional speeches, calling into question the common economic interpretation of ideological differences in the US Congress.

Type
Research Article
Copyright
Copyright © Cambridge University Press 2011

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References

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7 Initially, this finding met with widespread disbelief. See Poole and Rosenthal, Congress, p. 8. However, the low-dimensionality of legislative voting has been confirmed by other scholars using different estimation methodologies, such as Bayesian procedures ( Clinton, Joshua, Jackman, Simon and Rivers, Doug, ‘The Statistical Analysis of Roll Call Data’, American Political Science Review, 98 (2004), 355370CrossRefGoogle Scholar) or factor analysis ( Heckman, James J. and Snyder, James M. Jr, ‘Linear Probability Models of the Demand for Attribution with an Empirical Application to Estimating the Preferences of Legislators’, RAND Journal of Economics, 28 (1997), S142S189CrossRefGoogle Scholar) for estimating ideal points.

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17 We used the Poole and Rosenthal dw-nominatescores available at http://voteview.com/dwnomin.htm.

18 We will discuss differences between the House and the Senate below. We will also suggest how the approach can be utilized when studying other legislatures.

19 The dw-nominate scores for the same senators can be different across congresses. As a result, when we prepare the senatorial speeches as training and testing documents (each document is called an ‘example’ in machine learning terms), a senator could be assigned to the extreme category in one congress but moved to the moderate category in another. Therefore, we treat the same senators in different congresses as different training/testing examples.

20 Forty-five of these fifty ‘extreme’ senators had already served in the 107th Congress.

21 This issue was investigated by Poole (‘Changing Minds? Not in Congress’) in the context of voting behaviour. Poole found strong support for individual ideological consistency in members of Congress over time.

22 Ninety-one senators in the 108th Congress served in previous congresses. Forty-four of the fifty extreme senators in the 108th Congress were rated as extreme in previous congresses.

23 The performance of classification algorithms is tested using common benchmark datasets. The Reuters-21578 news collection, the OHSUMED Medline abstract collection, and the 20 Usenet newsgroups collection are the most widely used benchmark datasets. The Reuters-21578 collection is available at http://kdd.ics.uci.edu/databases/20newsgroups/20newsgroups.html. The OHSUMED collection is available at http://trec.nist.gov/data/t9_filtering.html. The 20 newsgroups collection is available at http://kdd.ics.uci.edu/databases/20newsgroups.html.

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25 Pang, Lee and Vaithyanathan, ‘Thumbs up?’

26 Details on the way in which these vectors were derived from the documents are discussed in the next section.

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30 Dave, Kushal, Lawrence, Steve and Pennock, David M., ‘Mining the Peanut Gallery: Opinion Extraction and Semantic Classification of Product Reviews’, Proceedings of the 12th International Conference on World Wide Web (2003), 519522Google Scholar, retrieved 28 May 2007, from the ACM Digital Library; Pang, Lee and Vaithyanathan, ‘Thumbs up?’

31 Finn, Aidan and Kushmerick, Nicholas, ‘Learning to Classify Documents according to Genre’, Journal of American Society of Information Science and Technology, 57 (2006), 15061518CrossRefGoogle Scholar. For example, some typical adjectives in movie reviews (like hilarious and boring) are unlikely to occur in restaurant reviews, although some opinion descriptors (like terrific and bad) are universal.

32 Miss was not included because all single female Senators (e.g. Susan Collins and Barbara Mikulski) were saluted as ‘Ms’.

33 Yu, Bei, Diermeier, Daniel and Kaufmann, Stefan‘Classifying Party Affiliation from Political Speech’, Journal of Information Technology & Politics, 5 (2008), 3348CrossRefGoogle Scholar.

34 Porter, M. F., ‘An Algorithm for Suffix Stripping’, Program, 14 (1980), 130137CrossRefGoogle Scholar.

35 We used the MorphAdorner tagger to tag the parts of speech. Since the tagger has its own tokenizer, the generated word forms in this case are slightly different from the results of the simple tokenizer.

36 This is a standard approach in classification tasks; see, e.g., Tom Mitchell, Machine Learning (Toronto: McGraw Hill, 1997). An alternative approach consists in setting aside a sizeable portion of the data as a ‘held-out’ set which is ignored during training and only used for testing. This approach is sound for datasets with large numbers of labelled examples. However, for small datasets such as ours, it is problematic since the arbitrary training/test split may accidentally lead to two datasets that are unlikely to have been produced by the same source.

37 The accuracy was even higher (94 per cent) when adjectives were used as feature sets. Since there are only fifty test examples, 2 per cent accuracy improvement corresponds to one more correctly predicted example. Therefore, we do not think the accuracy difference is significant.

38 Note, however, that the out-of-sample set is small due to lack of turnover among members of the Senate.

39 These polarities are arbitrary. See the methodology section for technical details.

40 This is related to the literature on framing. For a recent review, see Druckman, Jamie and Chong, Dennis , ‘Framing Theory’, Annual Review of Political Science, 10 (2007), 103126Google Scholar.

41 We reproduce in Table 4 the most liberal and conservative words as they appear in our ranking, from first to the twentieth in rank order. However, for the purposes of this discussion, we selected words ranked in the top fifty to illustrate commonality.

42 For example, Senator Colman in the 106th Senate mentioned ‘grievous injury’ before he expressed his objection to this amendment to the partial-birth ban act.

43 To compare the two chambers directly, it is necessary to use a common space score for both the House and the Senate. See, for example, Royce Carroll, Jeff Lewis, James Lo, Nolan McCarty, Keith Poole and Howard Rosenthal, ‘ “Common Space” (Joint House and Senate) dw-nominate Scores with Bootstrapped Standard Errors’ (2009).

44 The kappa coefficient is often used to measure inter-rater agreement in annotation. We followed the kappa computation procedure described at http://faculty.vassar.edu/lowry/kappa.html.

45 Yu, Bei, Kaufmann, Stefan and Diermeier, Daniel, ‘Classifying Party Affiliation from Political Speech’ Journal of Information Technology and Politics, 5 (2008), 3348CrossRefGoogle Scholar. The lower accuracy is a consequence of a smaller dataset.

46 Yu, Bei, Kaufmann, Stefan and Diermeier, Daniel, ‘Exploring the Characteristics of Opinion Expressions for Political Opinion Classification’, Proceedings of the 9th Annual International Conference on Digital Government Research (dg.o 2008) (Montreal, May 2008), pp. 82–89Google Scholar.

47 We thank an anonymous referee for pointing out this possibility.

48 Høyland, Bjørn and Godbout, Jean-François, ‘Predicting Party Group Affiliation from European Parliament Debates’ (paper presented at the European Consortium for Political Research Meeting of the Standing Group on the European Union (Riga: Latvia, 2008)Google Scholar).

49 Poole, Spatial Models of Parliamentary Voting.

50 Except during the Era of Good Feelings (1817–25) and the period surrounding the Civil War (1853–76); Poole and Rosenthal, ‘Congress’; Poole and Rosenthal, Ideology and Congress.

51 See, for example, Lakoff, George, Moral Politics: How Liberals and Conservatives Think (Chicago: The University of Chicago Press, 2002)CrossRefGoogle Scholar.

52 The large dot in the equation refers to the operation of the inner product of two vectors.

53 Leopold, Edda and Kindermann, Jörg, ‘Text Categorization with Support Vector Machines: How to Represent Texts in Input Space?’ Machine Learning, 46 (2002), 423444CrossRefGoogle Scholar.

54 The abbreviation sv stands for an arbitrary support vector. In the SVMlight software package, the first support vector (according to its order in the input data) was used to compute b.

55 Joachims, ‘SVMlight’.

56 Chang and Lin, ‘Library for Support Vector Machines’.