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Christian Kampichler

Researcher at Universidad Juárez Autónoma de Tabasco

Publications -  58
Citations -  2840

Christian Kampichler is an academic researcher from Universidad Juárez Autónoma de Tabasco. The author has contributed to research in topics: Soil biology & Soil water. The author has an hindex of 24, co-authored 55 publications receiving 2656 citations. Previous affiliations of Christian Kampichler include Free University of Berlin & University of Vienna.

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Influence of heavy metals on the functional diversity of soil microbial communities

TL;DR: In this paper, the authors investigated the prognostic potential of 16 soil microbial properties (microbial biomass, respiration, N-mineralization, 13 soil enzymes involved in cycling of C, N, P and S) with regard to their ability to differentiate the four contamination levels.
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Impacts of Rising Atmospheric Carbon Dioxide on Model Terrestrial Ecosystems

TL;DR: In model terrestrial ecosystems maintained at elevated concentrations of atmospheric carbon dioxide, increases in photosynthetically fixed carbon were allocated below ground, raising concentrations of dissolved organic carbon in soil, and the composition of soil fungal species changed, with increases in rates of cellulose decomposition.
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The role of microarthropods in terrestrial decomposition: a meta-analysis of 40 years of litterbag studies

TL;DR: A significant decrease in the microarthropod effect with publication year is noticed, indicating that, in the first decades of litterbag use, soil zoologists may have studied “promising” sites with a higher a priori probability of positive microarporthropod effects on litter mass loss.
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Six years of in situ CO2 enrichment evoke changes in soil structure and soil biota of nutrient‐poor grassland

TL;DR: It is provided first evidence that elevated CO2 can reduce soil aggregation at the scale from µm to mm scale, and that this can affect soil microfaunal populations.
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Classification in conservation biology: A comparison of five machine-learning methods

TL;DR: Characteristics such as time effort, classifier comprehensibility and method intricacy are evaluated—aspects that determine the success of a classification technique among ecologists and conservation biologists as well as for the communication with managers and decision makers.