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Therefore, studying economic indicators and understanding their dynamics is necessary in increasingly competitive markets.\n\u00a0\nMethod: To this end, the daily price indices in the main regions of the State of Bahia will be investigated using network analysis weighted by the coefficient of , the formation of clusters, and degree distribution.\n\u00a0\nResults and Discussion: Strong connectivity in the fat ox networks was found for all time scales and for corn only for large scales. The results allowed the unification of the fat ox market to be identified and the trend for price indices to move. Meanwhile, the corn market only has these characteristics for large scales, allowing for better short-term business opportunities.\n\u00a0\nResearch Implications: This research provides valuable information for developing public policies, local and international investors, researchers, and those interested in the subject. 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